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  • Ubuntu 18.04配置OpenCV 4.2.0

    本文主要介绍在Ubuntu 18.04中从源码安装配置OpenCV,并使用一个简单的例子验证是否安装成功;

    具体安装配置步骤,参考文章见:https://cv-tricks.com/installation/opencv-4-1-ubuntu18-04/

    与上述链接中提供的教程不同的是:

    • 部分依赖包安装可能需要修改
    • 本文安装配置OpenCV版本为4.2,支持使用CUDA对DNN模块加速计算
    • 本文不涉及Python接口配置,仅配置为C++使用,所以会跳过步骤Step2~5

    Step 1: 安装OpenCV的依赖包

    一步一步的安装下面的所有依赖包:

    sudo apt-get update -y # Update the list of packages
    sudo apt-get remove -y x264 libx264-dev # Remove the older version of libx264-dev and x264
    sudo apt-get install -y build-essential checkinstall cmake pkg-config yasm
    sudo apt-get install -y git gfortran
    sudo add-apt-repository -y "deb http://security.ubuntu.com/ubuntu xenial-security main"
    sudo apt-get install -y libjpeg8-dev libjasper-dev libpng12-dev
    sudo apt-get install -y libtiff5-dev
    sudo apt-get install -y libavcodec-dev libavformat-dev libswscale-dev libdc1394-22-dev
    sudo apt-get install -y libxine2-dev libv4l-dev
    sudo apt-get install -y libgstreamer1.0-dev libgstreamer-plugins-base1.0-dev
    sudo apt-get install -y qt5-default libgtk2.0-dev libtbb-dev
    sudo apt-get install -y libatlas-base-dev
    sudo apt-get install -y libfaac-dev libmp3lame-dev libtheora-dev
    sudo apt-get install -y libvorbis-dev libxvidcore-dev
    sudo apt-get install -y libopencore-amrnb-dev libopencore-amrwb-dev
    sudo apt-get install -y x264 v4l-utils
     
    # Some Optional Dependencies
    sudo apt-get install -y libprotobuf-dev protobuf-compiler
    sudo apt-get install -y libgoogle-glog-dev libgflags-dev
    sudo apt-get install -y libgphoto2-dev libeigen3-dev libhdf5-dev doxygen
    

    在安装上述依赖包的过程中,可能会存在一些错误提示,这里我将自己遇到的问题列出,并给出解决方案;
    错误1:

    E: Unable to locate package libjasper-dev
    

    执行:

    sudo add-apt-repository "deb http://security.ubuntu.com/ubuntu xenial-security main"
    sudo apt-get update
    

    再次执行安装依赖包就行;

    错误2:

    E: Unable to locate package libgstreamer0.10-dev
    

    执行:

    sudo apt install libgstreamer1.0-dev libgstreamer-plugins-base1.0-dev
    

    即可;

    Step 2: 下载OpenCV 4.2.0和OpenCV Contrib 4.2.0

    OpenCV 4.2.0:
    https://github.com/opencv/opencv/releases/tag/4.2.0
    
    OpenCV Contib 4.2.0:
    https://github.com/opencv/opencv_contrib/releases/tag/4.2.0
    

    假如将两个压缩包保存到/home/username/opencv4.2/,进行解压;

    另外,在编译的时候需要ippicv_2019_lnx_intel64_general_20180723.tgz这个文件,下载的时候会特别慢。这里提供一个链接,参考其中的第1,2两个步骤进行下载与配置;

    如,我将下载得到的文件放在了opencv4.2这个文件夹中,修改成"/home/username/opencv4.2/";

    最后目录结构如下:

    /home/username/opencv4.2/
    	opencv-4.2.0/
    	opencv_contrib-4.2.0/
    	ippicv_2019_lnx_intel64_general_20180723.tgz
    

    Step 3: 使用cmake构建库

    执行:

    cd /home/username/opencv4.2/opencv-4.2.0
    mkdir build
    cd build
    

    执行:

    cmake -D CMAKE_BUILD_TYPE=RELEASE 
          -D CMAKE_INSTALL_PREFIX=/usr/local 
          -D INSTALL_C_EXAMPLES=ON 
          -D CUDA_ARCH_BIN='7.5'
          -D WITH_CUDA=ON
          -D WITH_TBB=ON 
          -D WITH_V4L=ON 
          -D WITH_QT=ON 
          -D WITH_OPENGL=ON 
          -D OPENCV_EXTRA_MODULES_PATH=/home/username/opencv4.2/opencv_contrib-4.2.0/modules 
          -D BUILD_EXAMPLES=ON 
          -D OPENCV_GENERATE_PKGCONFIG=YES ..
    

    上述步骤需要修改的地方有两处:

    CUDA_ARCH_BIN='7.5'
    

    由于OpenCV 4.2支持使用CUDA对DNN模块进行加速计算,所以这里配置CUDA;在此之前需要自行配置好NVIDIA显卡的驱动与CUDA;

    其中7.5指的是显卡的计算能力,我的是GTX 1660Ti,对应的计算力为7.5;

    这里提供一个链接,可以参考:NVIDA CUDA显卡计算能力对应表

    第二处需要修改的地方是:

    OPENCV_EXTRA_MODULES_PATH=/home/username/opencv4.2/opencv_contrib-4.2.0/modules
    

    这里修改成你本机的opencv_contrib-4.2.0/modules的位置

    Step 4: 使用make构建库

    查看CPU核心数:

    nproc
    

    如,我的CPU核心数为12,执行

    cd /home/username/opencv4.2/build
    make -j12
    

    等待一段时候,出现Configuration Done即可,

    执行:

    sudo make install
    

    再次等待一段时候后,执行:

    sudo sh -c 'echo "/usr/local/lib" >> /etc/ld.so.conf.d/opencv.conf'
    sudo ldconfig
    

    Step 5: 修改opencv4.pc文件

    如果上述配置成功,则会在/usr/local/lib/文件夹中出现一个pkgconfig文件夹,里面有一个opencv.pc文件,内容大致如下:

    # Package Information for pkg-config
    
    prefix=/usr/local
    exec_prefix=${prefix}
    libdir=${exec_prefix}/lib
    includedir_old=${prefix}/include/opencv4/opencv2
    includedir_new=${prefix}/include/opencv4
    
    Name: OpenCV
    Description: Open Source Computer Vision Library
    Version: 4.2.0
    Libs: -L${exec_prefix}/lib -lopencv_gapi -lopencv_stitching -lopencv_aruco -lopencv_bgsegm -lopencv_bioinspired -lopencv_ccalib -lopencv_cudabgsegm -lopencv_cudafeatures2d -lopencv_cudaobjdetect -lopencv_cudastereo -lopencv_cvv -lopencv_dnn_objdetect -lopencv_dnn_superres -lopencv_dpm -lopencv_highgui -lopencv_face -lopencv_freetype -lopencv_fuzzy -lopencv_hdf -lopencv_hfs -lopencv_img_hash -lopencv_line_descriptor -lopencv_quality -lopencv_reg -lopencv_rgbd -lopencv_saliency -lopencv_sfm -lopencv_stereo -lopencv_structured_light -lopencv_phase_unwrapping -lopencv_superres -lopencv_cudacodec -lopencv_surface_matching -lopencv_tracking -lopencv_datasets -lopencv_text -lopencv_dnn -lopencv_plot -lopencv_videostab -lopencv_cudaoptflow -lopencv_optflow -lopencv_cudalegacy -lopencv_videoio -lopencv_cudawarping -lopencv_xfeatures2d -lopencv_shape -lopencv_ml -lopencv_ximgproc -lopencv_video -lopencv_xobjdetect -lopencv_objdetect -lopencv_calib3d -lopencv_imgcodecs -lopencv_features2d -lopencv_flann -lopencv_xphoto -lopencv_photo -lopencv_cudaimgproc -lopencv_cudafilters -lopencv_imgproc -lopencv_cudaarithm -lopencv_core -lopencv_cudev
    Libs.private: -lm -lpthread -L/usr/lib/x86_64-linux-gnu -lGL -lGLU -lcudart_static -ldl -lrt -lnppc -lnppial -lnppicc -lnppicom -lnppidei -lnppif -lnppig -lnppim -lnppist -lnppisu -lnppitc -lnpps -lcublas -lcudnn -lcufft -L-L/usr/local/cuda -llib64 -L-L/usr/lib -lx86_64-linux-gnu
    Cflags: -I${includedir_old} -I${includedir_new}
    

    注意:需要将第6行修改为:

    includedir_old=${prefix}/include/opencv4/opencv2
    

    如果没有自动生成,可以试着新建一个文件,将上述的内容复制进去,继续下一步;

    Step 6: 在.bashrc文件中添加PKG_CONFIG_PATH

    执行:

    sudo gedit ~/.bashrc
    

    在文件最后添加:

    PKG_CONFIG_PATH=$PKG_CONFIG_PATH:/usr/local/lib/pkgconfig
    export PKG_CONFIG_PATH
    

    退出后,执行

    source ~/.bashrc
    
    # 判断路径时候添加成功,返回:/usr/local/lib/pkgconfig即可
    echo $PKG_CONFIG_PATH
    

    Step 7: 使用C++代码进行验证

    在任意目录下创建test.cpp文件,加入下面内容:

    #include "opencv.hpp"
     
    using namespace cv;
    using namespace std;
     
    int main( int argc, char** argv )
    {
      cout << "OpenCV version : " << CV_VERSION << endl;
      cout << "Major version : " << CV_MAJOR_VERSION << endl;
      cout << "Minor version : " << CV_MINOR_VERSION << endl;
      cout << "Subminor version : " << CV_SUBMINOR_VERSION << endl;
    }
    

    使用命令行在其文件夹下执行:

    # 编译test.cpp程序,并生成可执行文件
    g++ -std=c++11 test.cpp `pkg-config --libs --cflags opencv4` -o result
    
    # 执行可执行文件
    ./result
    
    

    输出以下内容,即表明配置成功

    OpenCV version : 4.2.0
    Major version : 4
    Minor version : 2
    Subminor version : 0
    
    
    
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  • 原文地址:https://www.cnblogs.com/chenzhen0530/p/12109868.html
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