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  • 学习opencv_学习笔记二

    第三章 初探opencv

    Opencv的基本数据类型

    typedef struct CvPoint

    {

        int x;

        int y;

    #ifdef __cplusplus

        CvPoint(int _x = 0, int _y = 0): x(_x), y(_y) {}

        template<typename _Tp>

        CvPoint(const cv::Point_<_Tp>& pt): x((int)pt.x), y((int)pt.y) {}

        template<typename _Tp>

        operator cv::Point_<_Tp>() const { return cv::Point_<_Tp>(cv::saturate_cast<_Tp>(x), cv::saturate_cast<_Tp>(y)); }

    #endif

    }

    CvPoint;

     

    包含两个变体类型 :

     

    typedef struct CvPoint2D32f

    {

        float x;

        float y;

    #ifdef __cplusplus

        CvPoint2D32f(float _x = 0, float _y = 0): x(_x), y(_y) {}

        template<typename _Tp>

        CvPoint2D32f(const cv::Point_<_Tp>& pt): x((float)pt.x), y((float)pt.y) {}

        template<typename _Tp>

        operator cv::Point_<_Tp>() const { return cv::Point_<_Tp>(cv::saturate_cast<_Tp>(x), cv::saturate_cast<_Tp>(y)); }

    #endif

    }

    CvPoint2D32f;

     

     

    typedef struct CvPoint3D32f

    {

        float x;

        float y;

        float z;

    #ifdef __cplusplus

        CvPoint3D32f(float _x = 0, float _y = 0, float _z = 0): x(_x), y(_y), z(_z) {}

        template<typename _Tp>

        CvPoint3D32f(const cv::Point3_<_Tp>& pt): x((float)pt.x), y((float)pt.y), z((float)pt.z) {}

        template<typename _Tp>

        operator cv::Point3_<_Tp>() const { return cv::Point3_<_Tp>(cv::saturate_cast<_Tp>(x), cv::saturate_cast<_Tp>(y), cv::saturate_cast<_Tp>(z)); }

    #endif

    }

    CvPoint3D32f;

     

    ------------------------------cvsize

     

    typedef struct CvSize

    {

        int width;

        int height;

    #ifdef __cplusplus

        CvSize(int w = 0, int h = 0): width(w), height(h) {}

        template<typename _Tp>

        CvSize(const cv::Size_<_Tp>& sz): width(cv::saturate_cast<int>(sz.width)), height(cv::saturate_cast<int>(sz.height)) {}

        template<typename _Tp>

        operator cv::Size_<_Tp>() const { return cv::Size_<_Tp>(cv::saturate_cast<_Tp>(width), cv::saturate_cast<_Tp>(height)); }

    #endif

    }

    CvSize;

     

    变体

    typedef struct CvSize2D32f

    {

        float width;

        float height;

    #ifdef __cplusplus

        CvSize2D32f(float w = 0, float h = 0): width(w), height(h) {}

        template<typename _Tp>

        CvSize2D32f(const cv::Size_<_Tp>& sz): width(cv::saturate_cast<float>(sz.width)), height(cv::saturate_cast<float>(sz.height)) {}

        template<typename _Tp>

        operator cv::Size_<_Tp>() const { return cv::Size_<_Tp>(cv::saturate_cast<_Tp>(width), cv::saturate_cast<_Tp>(height)); }

    #endif

    }

    CvSize2D32f;

     

     

    ---------------------------cvscalar val指向四个双精度浮点型数组 存放RGBA值

    typedef struct CvScalar

    {

        double val[4];

    #ifdef __cplusplus

        CvScalar() {}

        CvScalar(double d0, double d1 = 0, double d2 = 0, double d3 = 0) { val[0] = d0; val[1] = d1; val[2] = d2; val[3] = d3; }

        template<typename _Tp>

        CvScalar(const cv::Scalar_<_Tp>& s) { val[0] = s.val[0]; val[1] = s.val[1]; val[2] = s.val[2]; val[3] = s.val[3]; }

        template<typename _Tp>

        operator cv::Scalar_<_Tp>() const { return cv::Scalar_<_Tp>(cv::saturate_cast<_Tp>(val[0]), cv::saturate_cast<_Tp>(val[1]), cv::saturate_cast<_Tp>(val[2]), cv::saturate_cast<_Tp>(val[3])); }

        template<typename _Tp, int cn>

        CvScalar(const cv::Vec<_Tp, cn>& v)

        {

            int i;

            for( i = 0; i < (cn < 4 ? cn : 4); i++ ) val[i] = v.val[i];

            for( ; i < 4; i++ ) val[i] = 0;

        }

    #endif

    }

    CvScalar;

     

     

     

    -------------------------cvrect

    typedef struct CvRect

    {

        int x;

        int y;

        int width;

        int height;

    #ifdef __cplusplus

        CvRect(int _x = 0, int _y = 0, int w = 0, int h = 0): x(_x), y(_y), width(w), height(h) {}

        template<typename _Tp>

        CvRect(const cv::Rect_<_Tp>& r): x(cv::saturate_cast<int>(r.x)), y(cv::saturate_cast<int>(r.y)), width(cv::saturate_cast<int>(r.width)), height(cv::saturate_cast<int>(r.height)) {}

        template<typename _Tp>

        operator cv::Rect_<_Tp>() const { return cv::Rect_<_Tp>((_Tp)x, (_Tp)y, (_Tp)width, (_Tp)height); }

    #endif

    }

    CvRect;

     

     

    矩阵和图像类型

    图像操作:

    缩放

    单通道提取

    找出特定通道的最大最小

    两图像求和

    对图像进行阀值操作

     

    cvMat矩阵结构

    新建一个二维矩阵的原型

    /** @brief Creates a matrix header and allocates the matrix data.

    The function call is equivalent to the following code:

    @code

        CvMat* mat = cvCreateMatHeader(rows, cols, type);

        cvCreateData(mat);

    @endcode

    @param rows Number of rows in the matrix

    @param cols Number of columns in the matrix

    @param type The type of the matrix elements in the form

    CV_<bit depth><S|U|F>C<number of channels> , where S=signed, U=unsigned, F=float. For

    example, CV _ 8UC1 means the elements are 8-bit unsigned and the there is 1 channel, and CV _

    32SC2 means the elements are 32-bit signed and there are 2 channels.

     */

     

    CVAPI(CvMat*)  cvCreateMat( int rows,//行 

    int cols,//列

    int type );//预定义类型

    cvCreateMat由多个原函数组成:

    //创建cvmat结构,不分配内存

    CVAPI(CvMat*)  cvCreateMatHeader( int rows, int cols, int type );

    //数据的内存分配

    CVAPI(void)  cvCreateData( CvArr* arr );

    //根据现有矩阵,创建一个新的矩阵

    /** Creates an exact copy of the input matrix (except, may be, step value) */

    CVAPI(CvMat*) cvCloneMat( const CvMat* mat );

    //释放矩阵

    CVAPI(void)  cvReleaseMat( CvMat** mat );

     

    cvMat结构体

    typedef struct CvMat

    {

        int type;

        int step;

        /* for internal use only */

        int* refcount;

        int hdr_refcount;

        union

        {

            uchar* ptr;

            short* s;

            int* i;

            float* fl;

            double* db;

        } data;

    #ifdef __cplusplus

        union

        {

            int rows;

            int height;

        };

        union

        {

            int cols;

            int width;

        };

    #else

        int rows;

        int cols;

    #endif

    #ifdef __cplusplus

        CvMat() {}

        CvMat(const CvMat& m) { memcpy(this, &m, sizeof(CvMat));}

        CvMat(const cv::Mat& m);

    #endif

    }

    CvMat;

     

    矩阵数据的存取

    访问矩阵的三种方法:

    简单的方法

    函数原型

    #define CV_MAT_ELEM( mat, elemtype, row, col )

     

    CvMat* mat = cvCreateMat(5,5,CV_32FC1);

    //从矩阵中提取一个元素

    float element_3_2 = CV_MAT_ELEM(*mat,//矩阵

    float,//元素类型

    3,//行

    2);//列

     

    //同时读取数据并设置数据

    CvMat* mat = cvCreateMat(5, 5, CV_32FC1);

    //从矩阵中提取一个元素

    float element_3_2 = 7.7;

    *((float*)CV_MAT_ELEM_PTR(*mat,//矩阵

    3,//行

    2))//列

    = element_3_2;

     

     

    麻烦的方法

    //访问普通矩阵中的方法

    CVAPI(uchar*) cvPtr1D( const CvArr* arr, //矩阵指针参数

    int idx0, //索引的整数值

    int* type CV_DEFAULT(NULL));//输出值的类型

    CVAPI(uchar*) cvPtr2D( const CvArr* arr,

    int idx0,

    int idx1,

    int* type CV_DEFAULT(NULL) );

    CVAPI(uchar*) cvPtr3D( const CvArr* arr,

    int idx0,

    int idx1,

    int idx2,

                          int* type CV_DEFAULT(NULL));

     

    CVAPI(uchar*) cvPtrND( const CvArr* arr,

    const int* idx, //指向整型数组的指针(索引)

    int* type CV_DEFAULT(NULL),

                          int create_node CV_DEFAULT(1),

                          unsigned* precalc_hashval CV_DEFAULT(NULL));

     

     

    只是读取数据

    CVAPI(double) cvGetReal1D( const CvArr* arr, int idx0 );

    CVAPI(double) cvGetReal2D( const CvArr* arr, int idx0, int idx1 );

    CVAPI(double) cvGetReal3D( const CvArr* arr, int idx0, int idx1, int idx2 );

    CVAPI(double) cvGetRealND( const CvArr* arr, const int* idx );

     

     

    //会很浪费空间

    CVAPI(CvScalar) cvGet1D( const CvArr* arr, int idx0 );

    CVAPI(CvScalar) cvGet2D( const CvArr* arr, int idx0, int idx1 );

    CVAPI(CvScalar) cvGet3D( const CvArr* arr, int idx0, int idx1, int idx2 );

    CVAPI(CvScalar) cvGetND( const CvArr* arr, const int* idx );

     

    为矩阵元素设定值

    CVAPI(void) cvSetReal1D( CvArr* arr, int idx0, double value );

    CVAPI(void) cvSetReal2D( CvArr* arr, int idx0, int idx1, double value );

    CVAPI(void) cvSetReal3D( CvArr* arr, int idx0,

                            int idx1, int idx2, double value );

    CVAPI(void) cvSetRealND( CvArr* arr, const int* idx, double value );

     

     

    CVAPI(void) cvSet1D( CvArr* arr, int idx0, CvScalar value );

    CVAPI(void) cvSet2D( CvArr* arr, int idx0, int idx1, CvScalar value );

    CVAPI(void) cvSet3D( CvArr* arr, int idx0, int idx1, int idx2, CvScalar value );

    CVAPI(void) cvSetND( CvArr* arr, const int* idx, CvScalar value );

     

     

    处理浮点型单通道矩阵

    double  cvmGet( const CvMat* mat, int row, int col )

     void  cvmSet( CvMat* mat, int row, int col, double value )

     

     

     

     

    恰当的方法

    矩阵的存储是按光栅扫描顺序存储

    /**

    累加一个三通道矩阵中的所有元素

    */

    float sum(const CvMat* mat) {

    float s = 0.0f;

    for (int row = 0; row < mat->rows; row++)

    {

    const float* ptr = (const float*)(mat->data.ptr + row*mat->step);

    for (int col = 0; col < mat->cols; col++)

    {

    s += *ptr++;

    }

    }

    return (s);

    }

     

     

     

    点的数组

    计算给定点的位置的计算公式

    δ=(row)*Ncols*Nchannels+(col)*Nchannels+(channel)

    Ncols  列数

    Nchannels 通道数

     

     

    IplImage数据结构

    _IplImage

    {

        int  nSize;             /**< sizeof(IplImage) */

        int  ID;                /**< version (=0)*/

    int  nChannels;         /**< Most of OpenCV functions support 1,2,3 or 4 channels

    通道数

    */

        int  alphaChannel;      /**< Ignored by OpenCV */

    int  depth;             /**< Pixel depth in bits:

    IPL_DEPTH_8U,  无符号8位整数

    IPL_DEPTH_8S,  有符号8位整数

    IPL_DEPTH_16S, 有符号16位整数

                                  IPL_DEPTH_32S, 有符号32位整数

    IPL_DEPTH_32F 32位符点数单精度

    IPL_DEPTH_64F  64位符点数单双精度

    are supported.  */

        char colorModel[4];     /**< Ignored by OpenCV */

        char channelSeq[4];     /**< ditto */

        int  dataOrder;         /**< 0 - interleaved color channels, 1 - separate color channels.

                                   cvCreateImage can only create interleaved images

    取值可以是

    IPL_DATA_ORDER_PIXEL  将像素点不同通道的值交错排在一起

    IPL_DATA_ORDER_PLANE  将像素同通道值排在一起

     

     */

        int  origin;            /**< 0 - top-left origin,

                                   1 - bottom-left origin (Windows bitmaps style).

    IPL_ORIGIN_TL

    IPL_ORIGIN_BL

    设置坐示原点位置 ,左上角或者左下角

      */

        int  align;             /**< Alignment of image rows (4 or 8).

                                   OpenCV ignores it and uses widthStep instead.    */

        int  width;             /**< Image width in pixels.                           */

        int  height;            /**< Image height in pixels.                          */

        struct _IplROI *roi;    /**< Image ROI. If NULL, the whole image is selected. */

        struct _IplImage *maskROI;      /**< Must be NULL. */

        void  *imageId;                 /**< "           " */

        struct _IplTileInfo *tileInfo;  /**< "           " */

        int  imageSize;         /**< Image data size in bytes

                                   (==image->height*image->widthStep

                                   in case of interleaved data)*/

        char *imageData;        /**< Pointer to aligned image data.指向第一行数据的指针 */

    int  widthStep;         /**< Size of aligned image row in bytes.

    相邻行的同列点之间的字节数

       */

        int  BorderMode[4];     /**< Ignored by OpenCV.                     */

        int  BorderConst[4];    /**< Ditto.                                 */

        char *imageDataOrigin;  /**< Pointer to very origin of image data

                                   (not necessarily aligned) -

                                   needed for correct deallocation */

    #ifdef __cplusplus

        _IplImage() {}

        _IplImage(const cv::Mat& m);

    #endif

    }

    IplImage;

     

     

     

    访问图像数据

    #include <opencv2opencv.hpp>

    using namespace cv;

    void staturate_sv(IplImage* img);

    int main(int argc,char** argv) {

    //读入图像

    IplImage* img= cvLoadImage("test.jpg");

    //

    staturate_sv(img);

    return 0;

    }

    /*

    在色度不变的情况下,设置每个点的饱合度为255

    */

    void staturate_sv(IplImage* img) {

    for (int y = 0; y < img->height; y++)

    {

    //指向第y行的起始位置

    uchar* ptr = (uchar*)(

    img->imageData + y*img->widthStep

    );

    for (int x = 0; x < img->width; x++)

    {

    //c通道在x行的位置

    ptr[3 * x + 1] = 255;

    ptr[3 * x + 2] = 255;

    }

    }

    }

     

    ROI和widthStep的补充

    可以提高计算机视觉代码的执行速度

    设置和取消ORI

    CVAPI(void)  cvSetImageROI( IplImage* image, CvRect rect );

    CVAPI(void)  cvResetImageROI( IplImage* image );

     

     

     

    使用imageROI来增加某范围的像素

    /*

    imageROI来增加某范围的像素

    在图像roi的蓝色通道增加150级灰度的效果

    */

    void roi_add() {

    //可以从控制台传入参数

    IplImage* src;

    //加载图像

    if ((src=cvLoadImage("test.jpg"))!=0) {

    //初始化坐标

    int x = atoi("10");

    int y = atoi("10");

    int width = atoi("50");

    int height = atoi("50");

    int add = atoi("150");

    cvSetImageROI(src,cvRect(x,y,width,height));

    cvAddS(src,cvScalar(add),src);

    //释放roi

    cvResetImageROI(src);

    cvNamedWindow("Roi_Add",1);

    cvShowImage("Roi_Add",src);

    cvWaitKey();

    }

    }

     

     

     

    如下图所示

     

     

     

     

    /*

    使用widthStep方法把图像的所有像素值加1

    */

    CvRect interest_rect;

    void addByWdthStep(IplImage* interest_rect_img) {

    interest_rect =CvRect(10,10,50,50);

    IplImage* sub_img = cvCreateImageHeader(

    cvSize(

    interest_rect.width,

    interest_rect.height

    ),

    interest_rect_img->depth,

    interest_rect_img->nChannels

    );

    sub_img->origin = interest_rect_img->origin;

    sub_img->widthStep = interest_rect_img->widthStep;

    sub_img->imageData = interest_rect_img->imageData +

    interest_rect.y*interest_rect_img->widthStep +

    interest_rect.x*interest_rect_img->nChannels;

    cvAddS(sub_img,cvScalar(1),sub_img);

    cvNamedWindow("WidthStep", 1);

    cvShowImage("WidthStep", sub_img);

    cvWaitKey();

    cvReleaseImageHeader(&sub_img);

    }

     

     

     

     

    矩阵和图像操作

    //计算两个数组差值的绝对值

    /** dst(x,y,c) = abs(src1(x,y,c) - src2(x,y,c)) */

    CVAPI(void) cvAbsDiff( const CvArr* src1,

    const CvArr* src2,

    CvArr* dst );

    //计算数组和标量差值的绝对值

    /** dst(x,y,c) = abs(src(x,y,c) - value(c)) */

    CVAPI(void) cvAbsDiffS( const CvArr* src,

    CvArr* dst,

    CvScalar value );

    //计算数组中所有元素的绝对值

    #define cvAbs( src,

     dst ) //计算结果写到dst

    cvAbsDiffS( (src), (dst), cvScalarAll(0))

     

    //两个数组的元素级的加运算,如果mask没有被设空,那么mask非零元素指定的dest值在函数执行后不变

    /** dst(mask) = src1(mask) + src2(mask) */

    CVAPI(void)  cvAdd( const CvArr* src1, const CvArr* src2, CvArr* dst,

                        const CvArr* mask CV_DEFAULT(NULL));

    //一个数据和一个标量的元素级的相加运算

    /** dst(mask) = src(mask) + value */

    CVAPI(void)  cvAddS( const CvArr* src, CvScalar value, CvArr* dst,

                         const CvArr* mask CV_DEFAULT(NULL));

     

    //两个数据的元素级的加权相加运算,可以用于实现alpha融合,即两幅图像融合

    /** dst = src1 * alpha + src2 * beta + gamma */

    CVAPI(void)  cvAddWeighted( const CvArr* src1, double alpha,

                                const CvArr* src2, double beta,

                                double gamma, CvArr* dst );

     

    /*

    alpha融合

    */

    void alpha_blends() {

    IplImage *src1, *src2;

    if ((src1=cvLoadImage("test2.jpg"))!=0&&(src2=cvLoadImage("test.jpg"))!=0)

    {

    int x = atoi("10");

    int y = atoi("10");

    int width = atoi("200");

    int height = atoi("200");

    double alpha = (double)atof("0.5");

    double beta = (double)atof("0.4");

    cvSetImageROI(src1, CvRect(x, y, width, height));

    cvSetImageROI(src2, CvRect(0, 0, width, height));

    cvAddWeighted(src1, alpha, src2, beta, 0.0, src1);

    cvResetImageROI(src1);

    cvNamedWindow("Alpha_blend", 1);

    cvShowImage("Alpha_blend", src1);

    cvWaitKey();

    }

    }

     

    //两个数组进行按位与

    /** dst(idx) = src1(idx) & src2(idx) */

    CVAPI(void) cvAnd( const CvArr* src1, const CvArr* src2,

                      CvArr* dst, const CvArr* mask CV_DEFAULT(NULL));

    /** dst(idx) = src(idx) & value */

    CVAPI(void) cvAndS( const CvArr* src, CvScalar value,

                       CvArr* dst, const CvArr* mask CV_DEFAULT(NULL));

     

    //计算数组中所有元素的平均值

    /** Calculates mean value of array elements */

    CVAPI(CvScalar)  cvAvg( const CvArr* arr, const CvArr* mask CV_DEFAULT(NULL) );

     

     

    //计算数组中所有元素的绝对值和标准差

    /** Calculates mean and standard deviation of pixel values */

    CVAPI(void)  cvAvgSdv( const CvArr* arr, CvScalar* mean, CvScalar* std_dev,

                           const CvArr* mask CV_DEFAULT(NULL) );

     

    //计算一组n维空间向量的协方差

    /** Calculates covariation matrix for a set of vectors

    @see @ref core_c_CovarFlags "flags"

    */

    CVAPI(void)  cvCalcCovarMatrix( const CvArr** vects, int count,

                                    CvArr* cov_mat, CvArr* avg, int flags );

    Flags的取值:

    CV_COVAR_NORMAL  计算均值和协方差

    CV_COVAR_SCRAMBLED  快速pca scrambled协方差

    CV_COVAR_USE_AVG 输入均值

    CV_COVAR_SCALE  重新输出缩放的协方差矩阵

     

     

    //进行比较操作

    /** dst(idx) = src1(idx) _cmp_op_ src2(idx) 两个数组中所有元素运用设置的比较操作*/

    CVAPI(void) cvCmp( const CvArr* src1,

     const CvArr* src2,

    CvArr* dst,

    int cmp_op );

     

    /** dst(idx) = src1(idx) _cmp_op_ value  对数组和标量运用设置的比较操作*/

    CVAPI(void) cvCmpS( const CvArr* src,

      double value,

      CvArr* dst,

      int cmp_op );

    Cmp_op  的取值如下:

    CV_CMP_EQ  (src1i==src2i)

    CV_CMP_GT  (src1i>src2i)

    CV_CMP_GE  (src1i>=src2i)

    CV_CMP_LT  (src1i<rc2i)

    CV_CMP_LE  (src1i<=src2i)

    CV_CMP_NE  (src1i!=src2i)

     

    //用可选的缩放值转换数组元素类型

    //1 将原图像的数据类型转换为目标图像的数据类型

    //2 对图像数据执行线性变换

    CVAPI(void)  cvConvertScale( const CvArr* src,

     CvArr* dst,

                                 double scale CV_DEFAULT(1),

                                 double shift CV_DEFAULT(0) );

     

     

     

    //先缩放和平移,算出绝对值,然后进行数据类型的转换

    /** Performs linear transformation on every source array element,

       stores absolute value of the result:

       dst(x,y,c) = abs(scale*src(x,y,c)+shift).

       destination array must have 8u type.

       In other cases one may use cvConvertScale + cvAbsDiffS */

    CVAPI(void)  cvConvertScaleAbs( const CvArr* src,

     CvArr* dst, // 结果数据的绝对值

                                    double scale CV_DEFAULT(1),

                                    double shift CV_DEFAULT(0) );

     

     

    //一个图像复制到别一个图像

    CVAPI(void)  cvCopy( const CvArr* src, //源图像

       CvArr* dst, //目标图像

                         const CvArr* mask CV_DEFAULT(NULL) );

     

     

    //array中非0元素的个数

    /** Calculates number of non-zero pixels */

    CVAPI(int)  cvCountNonZero( const CvArr* arr );

    //计算两个三维向量的向量积,必须为单通道数组

    CVAPI(void)  cvCrossProduct( const CvArr* src1,

    const CvArr* src2,

     CvArr* dst );//单通道,长度应精确为3

    //将数组的通道从一个颜色空间转换到另一个颜色空间

    /** @brief Converts input array pixels from one color space to another

    @see cv::cvtColor

    */

    CVAPI(void)  cvCvtColor( const CvArr* src, CvArr* dst, int code );

     

      CV_BGR2BGRA    =0,

        CV_RGB2RGBA    =CV_BGR2BGRA,

        CV_BGRA2BGR    =1,

        CV_RGBA2RGB    =CV_BGRA2BGR,

        CV_BGR2RGBA    =2,

        CV_RGB2BGRA    =CV_BGR2RGBA,

        CV_RGBA2BGR    =3,

        CV_BGRA2RGB    =CV_RGBA2BGR,

        CV_BGR2RGB     =4,

        CV_RGB2BGR     =CV_BGR2RGB,

        CV_BGRA2RGBA   =5,

        CV_RGBA2BGRA   =CV_BGRA2RGBA,

        CV_BGR2GRAY    =6,

        CV_RGB2GRAY    =7,

        CV_GRAY2BGR    =8,

        CV_GRAY2RGB    =CV_GRAY2BGR,

        CV_GRAY2BGRA   =9,

        CV_GRAY2RGBA   =CV_GRAY2BGRA,

        CV_BGRA2GRAY   =10,

        CV_RGBA2GRAY   =11,

        CV_BGR2BGR565  =12,

        CV_RGB2BGR565  =13,

        CV_BGR5652BGR  =14,

        CV_BGR5652RGB  =15,

        CV_BGRA2BGR565 =16,

        CV_RGBA2BGR565 =17,

        CV_BGR5652BGRA =18,

        CV_BGR5652RGBA =19,

        CV_GRAY2BGR565 =20,

        CV_BGR5652GRAY =21,

        CV_BGR2BGR555  =22,

        CV_RGB2BGR555  =23,

        CV_BGR5552BGR  =24,

        CV_BGR5552RGB  =25,

        CV_BGRA2BGR555 =26,

        CV_RGBA2BGR555 =27,

        CV_BGR5552BGRA =28,

        CV_BGR5552RGBA =29,

        CV_GRAY2BGR555 =30,

        CV_BGR5552GRAY =31,

        CV_BGR2XYZ     =32,

        CV_RGB2XYZ     =33,

        CV_XYZ2BGR     =34,

        CV_XYZ2RGB     =35,

        CV_BGR2YCrCb   =36,

        CV_RGB2YCrCb   =37,

        CV_YCrCb2BGR   =38,

        CV_YCrCb2RGB   =39,

        CV_BGR2HSV     =40,

        CV_RGB2HSV     =41,

        CV_BGR2Lab     =44,

        CV_RGB2Lab     =45,

        CV_BayerBG2BGR =46,

        CV_BayerGB2BGR =47,

        CV_BayerRG2BGR =48,

        CV_BayerGR2BGR =49,

        CV_BayerBG2RGB =CV_BayerRG2BGR,

        CV_BayerGB2RGB =CV_BayerGR2BGR,

        CV_BayerRG2RGB =CV_BayerBG2BGR,

        CV_BayerGR2RGB =CV_BayerGB2BGR,

        CV_BGR2Luv     =50,

        CV_RGB2Luv     =51,

        CV_BGR2HLS     =52,

        CV_RGB2HLS     =53,

        CV_HSV2BGR     =54,

        CV_HSV2RGB     =55,

        CV_Lab2BGR     =56,

        CV_Lab2RGB     =57,

        CV_Luv2BGR     =58,

        CV_Luv2RGB     =59,

        CV_HLS2BGR     =60,

        CV_HLS2RGB     =61,

        CV_BayerBG2BGR_VNG =62,

        CV_BayerGB2BGR_VNG =63,

        CV_BayerRG2BGR_VNG =64,

        CV_BayerGR2BGR_VNG =65,

        CV_BayerBG2RGB_VNG =CV_BayerRG2BGR_VNG,

        CV_BayerGB2RGB_VNG =CV_BayerGR2BGR_VNG,

        CV_BayerRG2RGB_VNG =CV_BayerBG2BGR_VNG,

        CV_BayerGR2RGB_VNG =CV_BayerGB2BGR_VNG,

        CV_BGR2HSV_FULL = 66,

        CV_RGB2HSV_FULL = 67,

        CV_BGR2HLS_FULL = 68,

        CV_RGB2HLS_FULL = 69,

        CV_HSV2BGR_FULL = 70,

        CV_HSV2RGB_FULL = 71,

        CV_HLS2BGR_FULL = 72,

        CV_HLS2RGB_FULL = 73,

        CV_LBGR2Lab     = 74,

        CV_LRGB2Lab     = 75,

        CV_LBGR2Luv     = 76,

        CV_LRGB2Luv     = 77,

        CV_Lab2LBGR     = 78,

        CV_Lab2LRGB     = 79,

        CV_Luv2LBGR     = 80,

        CV_Luv2LRGB     = 81,

        CV_BGR2YUV      = 82,

        CV_RGB2YUV      = 83,

        CV_YUV2BGR      = 84,

        CV_YUV2RGB      = 85,

        CV_BayerBG2GRAY = 86,

        CV_BayerGB2GRAY = 87,

        CV_BayerRG2GRAY = 88,

        CV_BayerGR2GRAY = 89,

        //YUV 4:2:0 formats family

        CV_YUV2RGB_NV12 = 90,

        CV_YUV2BGR_NV12 = 91,

        CV_YUV2RGB_NV21 = 92,

        CV_YUV2BGR_NV21 = 93,

        CV_YUV420sp2RGB = CV_YUV2RGB_NV21,

        CV_YUV420sp2BGR = CV_YUV2BGR_NV21,

        CV_YUV2RGBA_NV12 = 94,

        CV_YUV2BGRA_NV12 = 95,

        CV_YUV2RGBA_NV21 = 96,

        CV_YUV2BGRA_NV21 = 97,

        CV_YUV420sp2RGBA = CV_YUV2RGBA_NV21,

        CV_YUV420sp2BGRA = CV_YUV2BGRA_NV21,

        CV_YUV2RGB_YV12 = 98,

        CV_YUV2BGR_YV12 = 99,

        CV_YUV2RGB_IYUV = 100,

        CV_YUV2BGR_IYUV = 101,

        CV_YUV2RGB_I420 = CV_YUV2RGB_IYUV,

        CV_YUV2BGR_I420 = CV_YUV2BGR_IYUV,

        CV_YUV420p2RGB = CV_YUV2RGB_YV12,

        CV_YUV420p2BGR = CV_YUV2BGR_YV12,

        CV_YUV2RGBA_YV12 = 102,

        CV_YUV2BGRA_YV12 = 103,

        CV_YUV2RGBA_IYUV = 104,

        CV_YUV2BGRA_IYUV = 105,

        CV_YUV2RGBA_I420 = CV_YUV2RGBA_IYUV,

        CV_YUV2BGRA_I420 = CV_YUV2BGRA_IYUV,

        CV_YUV420p2RGBA = CV_YUV2RGBA_YV12,

        CV_YUV420p2BGRA = CV_YUV2BGRA_YV12,

        CV_YUV2GRAY_420 = 106,

        CV_YUV2GRAY_NV21 = CV_YUV2GRAY_420,

        CV_YUV2GRAY_NV12 = CV_YUV2GRAY_420,

        CV_YUV2GRAY_YV12 = CV_YUV2GRAY_420,

        CV_YUV2GRAY_IYUV = CV_YUV2GRAY_420,

        CV_YUV2GRAY_I420 = CV_YUV2GRAY_420,

        CV_YUV420sp2GRAY = CV_YUV2GRAY_420,

        CV_YUV420p2GRAY = CV_YUV2GRAY_420,

        //YUV 4:2:2 formats family

        CV_YUV2RGB_UYVY = 107,

        CV_YUV2BGR_UYVY = 108,

        //CV_YUV2RGB_VYUY = 109,

        //CV_YUV2BGR_VYUY = 110,

        CV_YUV2RGB_Y422 = CV_YUV2RGB_UYVY,

        CV_YUV2BGR_Y422 = CV_YUV2BGR_UYVY,

        CV_YUV2RGB_UYNV = CV_YUV2RGB_UYVY,

        CV_YUV2BGR_UYNV = CV_YUV2BGR_UYVY,

        CV_YUV2RGBA_UYVY = 111,

        CV_YUV2BGRA_UYVY = 112,

        //CV_YUV2RGBA_VYUY = 113,

        //CV_YUV2BGRA_VYUY = 114,

        CV_YUV2RGBA_Y422 = CV_YUV2RGBA_UYVY,

        CV_YUV2BGRA_Y422 = CV_YUV2BGRA_UYVY,

        CV_YUV2RGBA_UYNV = CV_YUV2RGBA_UYVY,

        CV_YUV2BGRA_UYNV = CV_YUV2BGRA_UYVY,

        CV_YUV2RGB_YUY2 = 115,

        CV_YUV2BGR_YUY2 = 116,

        CV_YUV2RGB_YVYU = 117,

        CV_YUV2BGR_YVYU = 118,

        CV_YUV2RGB_YUYV = CV_YUV2RGB_YUY2,

        CV_YUV2BGR_YUYV = CV_YUV2BGR_YUY2,

        CV_YUV2RGB_YUNV = CV_YUV2RGB_YUY2,

        CV_YUV2BGR_YUNV = CV_YUV2BGR_YUY2,

        CV_YUV2RGBA_YUY2 = 119,

        CV_YUV2BGRA_YUY2 = 120,

        CV_YUV2RGBA_YVYU = 121,

        CV_YUV2BGRA_YVYU = 122,

        CV_YUV2RGBA_YUYV = CV_YUV2RGBA_YUY2,

        CV_YUV2BGRA_YUYV = CV_YUV2BGRA_YUY2,

        CV_YUV2RGBA_YUNV = CV_YUV2RGBA_YUY2,

        CV_YUV2BGRA_YUNV = CV_YUV2BGRA_YUY2,

        CV_YUV2GRAY_UYVY = 123,

        CV_YUV2GRAY_YUY2 = 124,

        //CV_YUV2GRAY_VYUY = CV_YUV2GRAY_UYVY,

        CV_YUV2GRAY_Y422 = CV_YUV2GRAY_UYVY,

        CV_YUV2GRAY_UYNV = CV_YUV2GRAY_UYVY,

        CV_YUV2GRAY_YVYU = CV_YUV2GRAY_YUY2,

        CV_YUV2GRAY_YUYV = CV_YUV2GRAY_YUY2,

        CV_YUV2GRAY_YUNV = CV_YUV2GRAY_YUY2,

        // alpha premultiplication

        CV_RGBA2mRGBA = 125,

        CV_mRGBA2RGBA = 126,

        CV_RGB2YUV_I420 = 127,

        CV_BGR2YUV_I420 = 128,

        CV_RGB2YUV_IYUV = CV_RGB2YUV_I420,

        CV_BGR2YUV_IYUV = CV_BGR2YUV_I420,

        CV_RGBA2YUV_I420 = 129,

        CV_BGRA2YUV_I420 = 130,

        CV_RGBA2YUV_IYUV = CV_RGBA2YUV_I420,

        CV_BGRA2YUV_IYUV = CV_BGRA2YUV_I420,

        CV_RGB2YUV_YV12  = 131,

        CV_BGR2YUV_YV12  = 132,

        CV_RGBA2YUV_YV12 = 133,

        CV_BGRA2YUV_YV12 = 134,

        // Edge-Aware Demosaicing

        CV_BayerBG2BGR_EA = 135,

        CV_BayerGB2BGR_EA = 136,

        CV_BayerRG2BGR_EA = 137,

        CV_BayerGR2BGR_EA = 138,

        CV_BayerBG2RGB_EA = CV_BayerRG2BGR_EA,

        CV_BayerGB2RGB_EA = CV_BayerGR2BGR_EA,

        CV_BayerRG2RGB_EA = CV_BayerBG2BGR_EA,

        CV_BayerGR2RGB_EA = CV_BayerGB2BGR_EA,

    CV_COLORCVT_MAX  = 139

     

     

    /** Calculates determinant of input matrix 计算方阵的行列式*/

    CVAPI(double) cvDet( const CvArr* mat );

     

     

     

    //用另外一个数组对一个数组进行元素级的除法运算

    /** element-wise division/inversion with scaling:

        dst(idx) = src1(idx) * scale / src2(idx)

        or dst(idx) = scale / src2(idx) if src1 == 0 */

    CVAPI(void)  cvDiv( const CvArr* src1,

      const CvArr* src2,

                        CvArr* dst,

      double scale CV_DEFAULT(1));

     

     

    //计算两个向量的点积,单通道

    CVAPI(double)  cvDotProduct( const CvArr* src1, const CvArr* src2 );

     

     

     

    //计算方阵的特征值和特征向量

    /** Finds eigen values and vectors of a symmetric matrix */

    CVAPI(void)  cvEigenVV( CvArr* mat, //矩阵

    CvArr* evects, //顺序保存的特征向量

    CvArr* evals, //特征值

                            double eps CV_DEFAULT(0), //停止参数

                            int lowindex CV_DEFAULT(-1),

                            int highindex CV_DEFAULT(-1));

     

    //围绕选定轴旋转

    /** Mirror array data around horizontal (flip=0),

       vertical (flip=1) or both(flip=-1) axises:

       cvFlip(src) flips images vertically and sequences horizontally (inplace) */

    CVAPI(void)  cvFlip( const CvArr* src, //图像

     CvArr* dst CV_DEFAULT(NULL), //

                          int flip_mode CV_DEFAULT(0));//为0时,只会绕x轴转

     

     

     

     

     

     

     

    //矩阵乘法 d=a*op(A)*op(B)+b*op(C)

    /** Extended matrix transform:

       dst = alpha*op(A)*op(B) + beta*op(C), where op(X) is X or X^T */

    CVAPI(void)  cvGEMM( const CvArr* src1,

       const CvArr* src2,

       double alpha,

                         const CvArr* src3,

     double beta,

    CvArr* dst,

                         int tABC CV_DEFAULT(0));//转置,可以是0 或是以下几种

    #define CV_GEMM_A_T 1

    #define CV_GEMM_B_T 2

    #define CV_GEMM_C_T 4

     

     

    //从一个数组的列中复制元素

    /** @overload

    @param arr Input array

    @param submat Pointer to the resulting sub-array header

    @param col Zero-based index of the selected column

    */

    CV_INLINE  CvMat*  cvGetCol( const CvArr* arr, //矩阵

    CvMat* submat, //指向矩阵中的特定列

    int col )//指定列

    {

        return cvGetCols( arr, submat, col, col + 1 );

    }

     

     

    //从数组相邻的多列中复制元素

    CVAPI(CvMat*) cvGetCols( const CvArr* arr,

      CvMat* submat,

                            int start_col,//开始列

        int end_col );//结束列

     

     

    //复制数组中对角线上的所有元素

    CVAPI(CvMat*) cvGetDiag( const CvArr* arr,

      CvMat* submat,

                                int diag CV_DEFAULT(0));

     

    //返回数组的维数

    CVAPI(int) cvGetDims( const CvArr* arr, int* sizes CV_DEFAULT(NULL) );

     

    //返回一个数组的所有维的大小

    CVAPI(int) cvGetDimSize( const CvArr* arr, int index );

     

     

    //从一个数组的行中复制元素

    CV_INLINE  CvMat*  cvGetRow( const CvArr* arr, CvMat* submat, int row )

    {

        return cvGetRows( arr, submat, row, row + 1, 1 );

    }

     

    //从一个数组的相邻行中复制数组

    CVAPI(CvMat*) cvGetRows( const CvArr* arr, CvMat* submat,

                            int start_row, int end_row,

                            int delta_row CV_DEFAULT(1));

     

     

    //得到二维数组的尺寸

    CVAPI(CvSize) cvGetSize( const CvArr* arr );

     

     

    //从一个数组的子区域复制元素

    CVAPI(CvMat*) cvGetSubRect( const CvArr* arr, CvMat* submat, CvRect rect );

     

     

     

    //检查一个数组中的元素是否在另外两个数组中的值的范转围

    //检查图像中像素的灰度是否属于某一指定范围

    /** dst(idx) = lower(idx) <= src(idx) < upper(idx) */

    CVAPI(void) cvInRange( const CvArr* src, //图像

     const CvArr* lower,//起始值

                          const CvArr* upper,

     CvArr* dst );//如果>=lower,且<upper,dst中对应的值为0xff,否则为0

    //检查一个数组的元素的值是否在另外两个标量的范围

    //如果是多通道,则会分通道进行处理

    /** dst(idx) = lower <= src(idx) < upper */

    CVAPI(void) cvInRangeS( const CvArr* src,

     CvScalar lower,

                           CvScalar upper,

    CvArr* dst );

     

     

     

     

    //求矩阵的转置

    /** Inverts matrix */

    CVAPI(double)  cvInvert( const CvArr* src,//

     CvArr* dst, //保存结果

      int method CV_DEFAULT(CV_LU));//参数值有以下几种:

    #define CV_LU  0  高斯消去

    #define CV_SVD 1  奇异值分解

    #define CV_SVD_SYM 2  对称矩阵的SVD

     

     

    //计算两个向量间的马式距离

    /** Calculates Mahalanobis(weighted) distance */

    CVAPI(double)  cvMahalanobis( const CvArr* vec1,

    const CvArr* vec2,

    const CvArr* mat );

     

    //两个数组中进行元素级的取最小值

    /** dst(idx) = min(src1(idx),src2(idx)) */

    CVAPI(void) cvMin( const CvArr* src1, const CvArr* src2, CvArr* dst );

    //一个数组和一个标量中进行元素级的取最小值

    /** dst(idx) = min(src(idx),value) */

    CVAPI(void) cvMinS( const CvArr* src, double value, CvArr* dst );

    //两个数组中取最大值

    /** dst(idx) = max(src1(idx),src2(idx)) */

    CVAPI(void) cvMax( const CvArr* src1, const CvArr* src2, CvArr* dst );

    //一个数组和一个标量中进行元素组的取最大值

    /** dst(idx) = max(src(idx),value) */

    CVAPI(void) cvMaxS( const CvArr* src, double value, CvArr* dst );

     

     

    //把几个单通道图像合并为一个多通道图像

    /** Merges a set of single-channel arrays into the single multi-channel array

       or inserts one particular [color] plane to the array */

    CVAPI(void)  cvMerge( const CvArr* src0, const CvArr* src1,

                          const CvArr* src2, const CvArr* src3,

                          CvArr* dst );

     

     

     

     

    //寻找数组中的最大最小值

    /** Finds global minimum, maximum and their positions */

    CVAPI(void)  cvMinMaxLoc( const CvArr* arr, double* min_val, double* max_val,

                              CvPoint* min_loc CV_DEFAULT(NULL),

                              CvPoint* max_loc CV_DEFAULT(NULL),

                              const CvArr* mask CV_DEFAULT(NULL) );

     

     

    //计算两个数组,元素级的乘积

    /** dst(idx) = src1(idx) * src2(idx) * scale

       (scaled element-wise multiplication of 2 arrays) */

    CVAPI(void)  cvMul( const CvArr* src1, const CvArr* src2,

                        CvArr* dst, double scale CV_DEFAULT(1) );

     

     

    //对数组中的元素按位取反

    /** dst(idx) = ~src(idx) */

    CVAPI(void) cvNot( const CvArr* src, CvArr* dst );

     

     

    //计算两个数组的正态相关性

    /** Finds norm, difference norm or relative difference norm for an array (or two arrays)

    @see ref core_c_NormFlags "flags"

    */

    CVAPI(double)  cvNorm( const CvArr* arr1, const CvArr* arr2 CV_DEFAULT(NULL),

                           int norm_type CV_DEFAULT(CV_L2),

                           const CvArr* mask CV_DEFAULT(NULL) );

     

     

    //将数组中元素进行规一化

    /** @see ref core_c_NormFlags "flags" */

    CVAPI(void)  cvNormalize( const CvArr* src, CvArr* dst,

                              double a CV_DEFAULT(1.), double b CV_DEFAULT(0.),

                              int norm_type CV_DEFAULT(CV_L2),

                              const CvArr* mask CV_DEFAULT(NULL) );

    Norm_type的类型

    #define CV_C            1

    #define CV_L1           2

    #define CV_L2           4

    #define CV_MINMAX       32

    //两个数组按位或

    /** dst(idx) = src1(idx) | src2(idx) */

    CVAPI(void) cvOr( const CvArr* src1, const CvArr* src2,

                     CvArr* dst, const CvArr* mask CV_DEFAULT(NULL));

    //数组与标量之间按位或

    /** dst(idx) = src(idx) | value */

    CVAPI(void) cvOrS( const CvArr* src, CvScalar value,

                      CvArr* dst, const CvArr* mask CV_DEFAULT(NULL));

     

    //通过给定操作符将二维数组约简为向量

    /** @see @ref core_c_ReduceFlags "flags" */

    CVAPI(void)  cvReduce( const CvArr* src, CvArr* dst, int dim CV_DEFAULT(-1),

                           int op CV_DEFAULT(CV_REDUCE_SUM) );

     

    //以平铺的方式进行数组复制

    /** Repeats source 2d array several times in both horizontal and

       vertical direction to fill destination array */

    CVAPI(void) cvRepeat( const CvArr* src, CvArr* dst );

     

     

     

     

    CVAPI(void)  cvConvertScale( const CvArr* src, CvArr* dst,

                                 double scale CV_DEFAULT(1),

                                 double shift CV_DEFAULT(0) );

     

    //用给定值初始化数组

    CVAPI(void)  cvSet( CvArr* arr, CvScalar value,

                        const CvArr* mask CV_DEFAULT(NULL) );

     

     

    //所有元素初始化为0

    CVAPI(void)  cvSetZero( CvArr* arr );

    #define cvZero  cvSetZero

     

     

    //将数组对角线上的设置为1,其他为0

    /** Makes an identity matrix (mat_ij = i == j) */

    CVAPI(void)  cvSetIdentity( CvArr* mat, CvScalar value CV_DEFAULT(cvRealScalar(1)) );

     

     

    //求出线性方程的解

    /** Solves linear system (src1)*(dst) = (src2)

       (returns 0 if src1 is a singular and CV_LU method is used) */

    CVAPI(int)  cvSolve( const CvArr* src1, const CvArr* src2, CvArr* dst,

                         int method CV_DEFAULT(CV_LU));

     

     

    //将多通道数组分解成为多个单通道数组

    /** Splits a multi-channel array into the set of single-channel arrays or

       extracts particular [color] plane */

    CVAPI(void)  cvSplit( const CvArr* src, CvArr* dst0, CvArr* dst1,

                          CvArr* dst2, CvArr* dst3 );

     

    //两个数组元素级相减

    /** dst(mask) = src1(mask) - src2(mask) */

    CVAPI(void)  cvSub( const CvArr* src1, const CvArr* src2, CvArr* dst,

                        const CvArr* mask CV_DEFAULT(NULL));

     

    //元素级的从数组减去标量

    /** dst(mask) = src(mask) - value = src(mask) + (-value) */

    CV_INLINE  void  cvSubS( const CvArr* src, CvScalar value, CvArr* dst,

                             const CvArr* mask CV_DEFAULT(NULL))

    {

        cvAddS( src, cvScalar( -value.val[0], -value.val[1], -value.val[2], -value.val[3]),

                dst, mask );

    }

     

     

    //从标量中减去数组

    /** dst(mask) = value - src(mask) */

    CVAPI(void)  cvSubRS( const CvArr* src, CvScalar value, CvArr* dst,

                          const CvArr* mask CV_DEFAULT(NULL));

     

    //元素级求和

    /** Finds sum of array elements */

    CVAPI(CvScalar)  cvSum( const CvArr* arr );

     

     

    //二维矩阵的奇异值分解

    /** Performs Singular Value Decomposition of a matrix */

    CVAPI(void)   cvSVD( CvArr* A, CvArr* W, CvArr* U CV_DEFAULT(NULL),

                         CvArr* V CV_DEFAULT(NULL), int flags CV_DEFAULT(0));

     

    //奇异值回代计算

    /** Performs Singular Value Back Substitution (solves A*X = B):

       flags must be the same as in cvSVD */

    CVAPI(void)   cvSVBkSb( const CvArr* W, const CvArr* U,

                            const CvArr* V, const CvArr* B,

                            CvArr* X, int flags );

     

     

    //计算矩阵迹,对角线元素的总和

    /** Calculates trace of the matrix (sum of elements on the main diagonal) */

    CVAPI(CvScalar) cvTrace( const CvArr* mat );

     

     

    //矩阵的转置运算

    /** Tranposes matrix. Square matrices can be transposed in-place */

    CVAPI(void)  cvTranspose( const CvArr* src, CvArr* dst );

    #define cvT cvTranspose

     

     

    //按位异或操作

    /** dst(idx) = src1(idx) ^ src2(idx) */

    CVAPI(void) cvXor( const CvArr* src1, const CvArr* src2,

                      CvArr* dst, const CvArr* mask CV_DEFAULT(NULL));

    //数组与标量之间按位异或

    /** dst(idx) = src(idx) ^ value */

    CVAPI(void) cvXorS( const CvArr* src, CvScalar value,

                       CvArr* dst, const CvArr* mask CV_DEFAULT(NULL));

     

    //所有通道,所有元素置0

    CVAPI(void)  cvSetZero( CvArr* arr );

    #define cvZero  cvSetZero

     

     

     

    绘图

    1直线

    //函数原型

    /** @brief Draws 4-connected, 8-connected or antialiased line segment connecting two points

    @see cv::line

    */

    CVAPI(void)  cvLine( CvArr* img, //图像

    CvPoint pt1, //直线的起始点

    CvPoint pt2,

                         CvScalar color, //颜色

    int thickness CV_DEFAULT(1),//线宽

                         int line_type CV_DEFAULT(8), //8连通,反走样模式

    int shift CV_DEFAULT(0) );

     

     

     

     

    //画矩形

    /** @brief Draws a rectangle given two opposite corners of the rectangle (pt1 & pt2)

       if thickness<0 (e.g. thickness == CV_FILLED), the filled box is drawn

    @see cv::rectangle

    */

    CVAPI(void)  cvRectangle( CvArr* img,

    CvPoint pt1,

     CvPoint pt2,

                              CvScalar color,

    int thickness CV_DEFAULT(1),

                              int line_type CV_DEFAULT(8),

                              int shift CV_DEFAULT(0));

     

    2圆形和椭圆

     

    //画圆

    /** @brief Draws a circle with specified center and radius.

       Thickness works in the same way as with cvRectangle

    @see cv::circle

    */

    CVAPI(void)  cvCircle( CvArr* img, //图像

    CvPoint center, //圆心

    int radius,//半径

                           CvScalar color, //颜色

    int thickness CV_DEFAULT(1),//线宽

                           int line_type CV_DEFAULT(8),  //

    int shift CV_DEFAULT(0));//

     

     

    //椭圆

    CVAPI(void)  cvEllipse( CvArr* img, //图像

    CvPoint center, //圆心

    CvSize axes,//高度和宽度

                            double angle, //偏离主轴 的角度 ,x轴逆时针方向为正

    double start_angle, //开始角度

    double end_angle,//结束角度

                            CvScalar color, //颜色

    int thickness CV_DEFAULT(1),//线宽

                            int line_type CV_DEFAULT(8),

    int shift CV_DEFAULT(0));

     

     

    3多边形

     

    //一次可以绘制多个多边形

    /** @brief Fills an area bounded by one or more arbitrary polygons

    @see cv::fillPoly

    */

    CVAPI(void)  cvFillPoly( CvArr* img,

    CvPoint** pts,

    const int* npts, //记数点构成的数组

                             int contours,

    CvScalar color,//颜色

                             int line_type CV_DEFAULT(8),

     int shift CV_DEFAULT(0) );

     

     

    //一次只能会制一个多边形,只能画凸多边形

    /** @brief Fills convex or monotonous polygon.

    @see cv::fillConvexPoly

    */

    CVAPI(void)  cvFillConvexPoly( CvArr* img,//图像 

    const CvPoint* pts,// 

    int npts, //

    CvScalar color, //颜色

                                   int line_type CV_DEFAULT(8),

    int shift CV_DEFAULT(0));

     

    //只画边

    /** @brief Draws one or more polygonal curves

    @see cv::polylines

    */

    CVAPI(void)  cvPolyLine( CvArr* img,

     CvPoint** pts,

    const int* npts,

    int contours,

                             int is_closed,

    CvScalar color,

    int thickness CV_DEFAULT(1),

                             int line_type CV_DEFAULT(8),

    int shift CV_DEFAULT(0) );

     

     

     

     

     

    4字体和文字

     

    /** @brief Renders text stroke with specified font and color at specified location.

       CvFont should be initialized with cvInitFont

    @see cvInitFont, cvGetTextSize, cvFont, cv::putText

    */

    CVAPI(void)  cvPutText( CvArr* img, //图像

    const char* text, //文字内容

    CvPoint org,//文本框左下角的位置

                            const CvFont* font, //字体格式

    CvScalar color );//颜色

     

    //初始化字体格式

    CVAPI(void)  cvInitFont( CvFont* font, //自定义的字体变量

    int font_face,//可用字体变量

                             double hscale, //渲染时选择全高(1.0)半高(0.5)

    double vscale,//创建斜体字

                             double shear CV_DEFAULT(0),

                             int thickness CV_DEFAULT(1),

                             int line_type CV_DEFAULT(8));

     

     

    可用字体

    #define CV_FONT_HERSHEY_SIMPLEX         0

    #define CV_FONT_HERSHEY_PLAIN           1

    #define CV_FONT_HERSHEY_DUPLEX          2

    #define CV_FONT_HERSHEY_COMPLEX         3

    #define CV_FONT_HERSHEY_TRIPLEX         4

    #define CV_FONT_HERSHEY_COMPLEX_SMALL   5

    #define CV_FONT_HERSHEY_SCRIPT_SIMPLEX  6

    #define CV_FONT_HERSHEY_SCRIPT_COMPLEX  7

     

     

    示例代码如下:

    /*

    绘图

    */

    int acmeArr1[2];

    CvPoint pointArr2[3];

    void drawing() {

    //读入图像

    IplImage *img = cvLoadImage("test2.jpg");

    //直线的起始点

    CvPoint pit1= cvPoint(10, 10);

    CvPoint pit2 = cvPoint(100,200);

    //线的颜色

    CvScalar color= cvScalar(255, 0, 0);

    //画线

    //cvLine(img, pit1, pit2, color,2,8,0);

    //画矩形

    //cvRectangle(img,pit1,pit2,color,CV_FILLED);

    //画圆形

    //cvCircle(img,pit2,100,color,CV_FILLED);

    //画椭圆

    //CvSize eSize = cvSize(100, 50);

    //cvEllipse(img,pit2,eSize,0,0,360,color);

    //画多边形

    //一次可以同时画多个多边形,全填充

    //初始化多边开数组

    CvPoint** pointArrs = new CvPoint*[2];

    pointArrs[0] = new CvPoint[3];

    pointArrs[1] = new CvPoint[4];

    int acmeArr1[2] = { 3,4 };

    //三角形

    pointArrs[0][0] = cvPoint(200,40);

    pointArrs[0][1] = cvPoint(150, 80);

    pointArrs[0][2]= cvPoint(250, 80);

    //四边形

    pointArrs[1][0] = cvPoint(150, 100);

    pointArrs[1][1] = cvPoint(250, 100);

    pointArrs[1][2]= cvPoint(250, 200);

    pointArrs[1][3]= cvPoint(150, 200);

    //初始化顶点数组

    cvFillPoly(img, pointArrs, acmeArr1,2,color);

    //一次只能画一个多边形

    //初始化多边开数组

    //pointArr2[1]= cvPoint(100, 100);

    //pointArr2[2] = cvPoint(100, 300);

    //pointArr2[3] = cvPoint(200, 400);

    //顶点数

    //int num = 3;

    //cvFillConvexPoly(img, pointArr2, num,color);

    //只连线画边

    //cvPolyLine(img, pointArrs, acmeArr1, 2,true, color);

    //字体与文字

    //初始化字体格式

    //CvFont myFont;

    //cvInitFont(&myFont,CV_FONT_HERSHEY_COMPLEX,1.0,1.0,0.0);

    //cvPutText(img,"hello retacn!",pit2,&myFont,color);

    //创建窗体

    cvNamedWindow("Drawing");

    //显示图像

    cvShowImage("Drawing", img);

    cvWaitKey();

    }

     

     

     

     

     

    数据存储

    存储的格式有 YAML 和 XML

    图片:

    //保存图像

    /* save image to file */

    CVAPI(int) cvSaveImage( const char* filename,//文件名称s

     const CvArr* image,//图像

                            const int* params CV_DEFAULT(0) );

     

    //加载图像

    /* load image from file

      iscolor can be a combination of above flags where CV_LOAD_IMAGE_UNCHANGED

      overrides the other flags

      using CV_LOAD_IMAGE_ANYCOLOR alone is equivalent to CV_LOAD_IMAGE_UNCHANGED

      unless CV_LOAD_IMAGE_ANYDEPTH is specified images are converted to 8bit

    */

    CVAPI(IplImage*) cvLoadImage( const char* filename, int iscolor CV_DEFAULT(CV_LOAD_IMAGE_COLOR));

    CVAPI(CvMat*) cvLoadImageM( const char* filename, int iscolor CV_DEFAULT(CV_LOAD_IMAGE_COLOR));

     

    cvMat的读取

    CVAPI(void) cvSave( const char* filename, //文件名

    const void* struct_ptr,//

                        const char* name CV_DEFAULT(NULL),

                        const char* comment CV_DEFAULT(NULL),

                        CvAttrList attributes CV_DEFAULT(cvAttrList()));

     

    CVAPI(void*) cvLoad( const char* filename,

                         CvMemStorage* memstorage CV_DEFAULT(NULL),

                         const char* name CV_DEFAULT(NULL),

                         const char** real_name CV_DEFAULT(NULL) );

     

    视频的读取

    /* grab a frame, return 1 on success, 0 on fail.

      this function is thought to be fast               */

    CVAPI(int) cvGrabFrame( CvCapture* capture );

     

     

    /* initialize video file writer */

    CVAPI(CvVideoWriter*) cvCreateVideoWriter( const char* filename, int fourcc,

                                               double fps, CvSize frame_size,

                                               int is_color CV_DEFAULT(1));

     

    /* write frame to video file */

    CVAPI(int) cvWriteFrame( CvVideoWriter* writer, const IplImage* image );

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

    /*

    往磁盘上写一个配置文件

    */

    void writeCfg() {

    CvMat* cmatrix=cvCreateMat(2,3,CV_8UC3);

    CvFileStorage* fs = cvOpenFileStorage(

    "cfg.xml",

    0,

    CV_STORAGE_WRITE//写数据,读数扰为CV_STORAGE_READ

    );

    cvWriteInt(fs, "frame_count", 10);

    cvStartWriteStruct(fs, "frame_size", CV_NODE_SEQ);//开始结构编写

    cvWriteInt(fs, 0, 320);

    cvWriteInt(fs, 0, 200);

    cvEndWriteStruct(fs);//结构结束

    cvWrite(fs, "color_cvt_matrix", cmatrix);//色彩转换矩阵

    cvReleaseFileStorage(&fs);//释放cvFileStorage

    }

     

    生成文件的内容如下:

    <?xml version="1.0"?>

    <opencv_storage>

    <frame_count>10</frame_count>

    <frame_size>

      320 200</frame_size>

    <color_cvt_matrix type_id="opencv-matrix">

      <rows>2</rows>

      <cols>3</cols>

      <dt>"3u"</dt>

      <data>

        205 205 205 205 205 205 205 205 205 205 205 205 205 205 205 205 205

        205</data></color_cvt_matrix>

    </opencv_storage>

     

     

     

    /*

    读取配置文件

    */

    void readCfg() {

    CvFileStorage* fs = cvOpenFileStorage(

    "cfg.xml",

    0,

    CV_STORAGE_READ//写数据,读数扰为CV_STORAGE_READ

    );

    int frame_count = cvReadIntByName(

    fs,

    0,

    "frame_count",

    5

    );

    //得到结构体

    CvSeq* s = cvGetFileNodeByName(fs, 0, "frame_size")->data.seq;

    int frame_width = cvReadInt((CvFileNode*)cvGetSeqElem(s,0));

    int frame_height = cvReadInt((CvFileNode*)cvGetSeqElem(s, 1));

    CvMat* color_cvt_matrix = (CvMat*)cvReadByName(

    fs,

    0,

    "color_cvt_matrix"

    );

    cvReleaseFileStorage(&fs);

    }

     

     

     

     

    数据存储常用函数

    cvOpenFileStorage  //为读写打开文件

    cvReleaseFileStorage  //释放存储的数据

     

    写操作

    cvStartWriteStruct  //开始写入新的数据结构

    cvEndWriteStruct   //结束写入数据结构

    cvWriteInt  //写入整型

    cvWriteReal  //写入浮点型

    cvWriteString  //写入字符串

    cvWriteComment  //写入一个注释定串

    cvWrite  //写入一个对象

    cvWriteRawData  //写入多个数值

    cvWriteFileNode   //将文件结点写入另一个文件存储器

     

     

    读操作

    cvGetRootFileNode   //取得存储器的根节点

    cvGetFileNodeName //返回文件节点名

    cvGetHashedKey  //为名称返回一个唯一的指什

    cvGetFileNode //在映图或文件存储器中找到节点

    cvGetFileNodeByName //在映图或存储器中找到相应节点

    cvReadInt  //读取整型

    cvReadIntByName //读取一个有名称的整型

    cvReadReal  //读取浮点型

    cvReadRealByName  //读取一个有名称的浮点型

    cvReadString  //从文件节点取字符串

    cvReadStringByName   //根据名称查取得文件节点

    cvRead   //找到对象解码并返回指针

    cvReadByName  //打到对象并解码

    cvReadRawData  //读取多个数值

    cvStartReadRawData   //初始化文件结点序列的读取

    cvReadRawDataSlice  //读取文件节点的内容

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  • 原文地址:https://www.cnblogs.com/retacn-yue/p/6194175.html
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