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  • 第7次系统综合实践 26组

    1、在树莓派中安装opencv库

    (1)安装依赖

    sudo apt-get update && sudo apt-get upgrade
    sudo apt-get install build-essential cmake pkg-config
    sudo apt-get install libjpeg-dev libtiff5-dev libjasper-dev libpng12-dev
    sudo apt-get install libavcodec-dev libavformat-dev libswscale-dev libv4l-dev
    sudo apt-get install libxvidcore-dev libx264-dev
    sudo apt-get install libgtk2.0-dev libgtk-3-dev
    sudo apt-get install libatlas-base-dev gfortran
    sudo apt-get install python2.7-dev python3-dev
    

    (2)下载OpenCV源码

    cd ~
    wget -O opencv.zip https://github.com/Itseez/opencv/archive/4.1.2.zip
    unzip opencv.zip
    wget -O opencv_contrib.zip https://github.com/Itseez/opencv_contrib/archive/4.1.2.zip
    unzip opencv_contrib.zip
    

    (3)安装pip

    wget https://bootstrap.pypa.io/get-pip.py
    sudo python get-pip.py
    sudo python3 get-pip.py
    

    (4)安装Python虚拟机

    sudo pip install virtualenv virtualenvwrapper
    sudo rm -rf ~/.cache/pip
    

    (5)配置~/.profile,添加内容:

    # virtualenv and virtualenvwrapper
    export WORKON_HOME=$HOME/.virtualenvs
    export VIRTUALENVWRAPPER_PYTHON=/usr/bin/python3
    source /usr/local/bin/virtualenvwrapper.sh
    
    • 使之生效
    source ~/.profile
    

    (6)使用Python3 安装虚拟机

    mkvirtualenv cv -p python3
    

    (7)进入虚拟机

    source ~/.profile
    workon cv
    
    • 可以看到前面有cv虚拟机的标识

    (8)编译OpenCV

    cd ~/opencv-4.1.2/
    mkdir build
    cd build
    cmake -D CMAKE_BUILD_TYPE=RELEASE 
        -D CMAKE_INSTALL_PREFIX=/usr/local 
        -D INSTALL_PYTHON_EXAMPLES=ON 
        -D OPENCV_EXTRA_MODULES_PATH=~/opencv_contrib-4.1.2/modules 
        -D BUILD_EXAMPLES=ON ..
    

    • 编译之前配置交换空间大小

    在开始编译过程之前,应 增加交换空间的大小。这使OpenCV可以使用 Raspberry PI的所有四个内核进行编译,而不会由于内存问题而挂起编译。
    把交换空间交换空间增大到 CONF_SWAPSIZE=1024

    • 重启swap服务
    sudo /etc/init.d/dphys-swapfile stop
    sudo /etc/init.d/dphys-swapfile start
    

    • 开始编译
    make -j4
    

    编译过程中遇到许多问题也极其耗时,这里遇到的问题写在后面

    (9)安装OpenCV

    sudo make install
    sudo ldconfig
    

    • 检查OpenCV的安装位置
    ls -l /usr/local/lib/python3.7/site-packages/
    cd ~/.virtualenvs/cv/lib/python3.7/site-packages/
    ln -s /usr/local/lib/python3.7/site-packages/cv2 cv2
    

    (10)验证安装

    source ~/.profile 
    workon cv
    python
    import cv2
    cv2.__version__
    

    2、 使用opencv和python控制树莓派的摄像头

    (1)安装picreame

    source ~/.profile 
    workon cv 
    pip install "picamera[array]"
    

    (2)使用python和opencv控制摄像头

    # import the necessary packages
    from picamera.array import PiRGBArray
    from picamera import PiCamera
    import time
    import cv2
    # initialize the camera and grab a reference to the raw camera capture
    camera = PiCamera()
    rawCapture = PiRGBArray(camera)
    # allow the camera to warmup
    time.sleep(1)
    # grab an image from the camera
    camera.capture(rawCapture, format="bgr")
    image = rawCapture.array
    # display the image on screen and wait for a keypress
    cv2.imshow("Image", image)
    cv2.waitKey(0)
    

    3、 利用树莓派的摄像头实现人脸识别

    (1)安装所需库

    source ~/.profile 
    workon cv 
    pip install dlib
    pip install face_recognition
    

    (2)准备好需要用到的图片和代码文件

    • facerec_on_raspberry_pi.py
    # This is a demo of running face recognition on a Raspberry Pi.
    # This program will print out the names of anyone it recognizes to the console.
    
    # To run this, you need a Raspberry Pi 2 (or greater) with face_recognition and
    # the picamera[array] module installed.
    # You can follow this installation instructions to get your RPi set up:
    # https://gist.github.com/ageitgey/1ac8dbe8572f3f533df6269dab35df65
    
    import face_recognition
    import picamera
    import numpy as np
    
    # Get a reference to the Raspberry Pi camera.
    # If this fails, make sure you have a camera connected to the RPi and that you
    # enabled your camera in raspi-config and rebooted first.
    camera = picamera.PiCamera()
    camera.resolution = (320, 240)
    output = np.empty((240, 320, 3), dtype=np.uint8)
    
    # Load a sample picture and learn how to recognize it.
    print("Loading known face image(s)")
    obama_image = face_recognition.load_image_file("obama_small.jpg")
    obama_face_encoding = face_recognition.face_encodings(obama_image)[0]
    
    # Initialize some variables
    face_locations = []
    face_encodings = []
    
    while True:
        print("Capturing image.")
        # Grab a single frame of video from the RPi camera as a numpy array
        camera.capture(output, format="rgb")
    
        # Find all the faces and face encodings in the current frame of video
        face_locations = face_recognition.face_locations(output)
        print("Found {} faces in image.".format(len(face_locations)))
        face_encodings = face_recognition.face_encodings(output, face_locations)
    
        # Loop over each face found in the frame to see if it's someone we know.
        for face_encoding in face_encodings:
            # See if the face is a match for the known face(s)
            match = face_recognition.compare_faces([obama_face_encoding], face_encoding)
            name = "<Unknown Person>"
    
            if match[0]:
                name = "Barack Obama"
    
            print("I see someone named {}!".format(name))
    
    • 如果检测到人脸会在终端显示出来

    • facerec_from_webcam_faster.py 由于代码过长,这里就不贴出来了
    • 该程序会显示摄像头实时拍摄的画面,如果检测到人脸会有一个方框显示,该程序能特别的识别出奥巴马和拜登的人脸。

    4、结合微服务的进阶任务

    (一)使用微服务,部署opencv的docker容器

    (1)安装Docker

    • 下载安装脚本
    #脚本安装docker
    sudo curl -sSL https://get.docker.com | sh
    
    #填加用户到docker组
    sudo usermod -aG docker pi
    #重新登陆以用户组生效
    exit && ssh pi@raspiberry
    
    • 查看docker版本,验证是否安装成功
    docker --version
    

    • 创建对应目录

    (2)定制opencv镜像

    • 拉取镜像
    docker pull sixsq/opencv-python
    

    (3)创建并运行容器

    docker run -it sixsq/opencv-python /bin/bash
    

    (4)自定义镜像

    • Dockerfile
    FROM my-opencv
    
    MAINTAINER GROUP13
    
    RUN mkdir /myapp
    
    WORKDIR /myapp
    
    ENTRYPOINT ["python3"]
    
    • 生成镜像
    docker build -t my-opencv-test .
    

    • 运行脚本
    docker run -it --rm --name my-running-py -v ${PWD}/workdir:/myapp --device=/dev/vchiq --device=/dev/video0 my-opencv-test isLeiJun.py
    

    (二)选做:在opencv的docker容器中跑通步骤(3)的示例代码

    环境准备

    • 开启树莓派的ssh配置中的X11
    cat /etc/ssh/sshd_config
    

    • 查看DISPLAY环境变量值
    printenv
    

    • 编辑启动脚本 run.sh
    xhost +	#允许来自任何主机的连接
    docker run -it 
            --rm 
            -v ${PWD}/workdir:/myapp 
            --net=host 
            -v $HOME/.Xauthority:/root/.Xauthority 
            -e DISPLAY=:10.0  	#此处填写上面查看到的变量值
            -e QT_X11_NO_MITSHM=1 
            --device=/dev/vchiq 
            --device=/dev/video0 
            --name my-running-py 
            my-opencv-test 
            recognition.py
    
    • 打开终端,运行run.sh
    sh run.sh
    

    可以正确识别人脸

    5、 以小组为单位,发表一篇博客,记录遇到的问题和解决方法,提供小组成员名单以及在线协作的图片

    (一)遇到的问题以及解决方法

    (1)软件包有未满足的依赖关系(忘记截图了)

    • 安装sudo apt-get install libjpeg-dev libtiff5-dev libjasper-dev libpng12-dev依赖时

    错误显示如下

    下列软件包有未满足的依赖关系:
    libavcodec-dev : 依赖: libavcodec58 (= 7:4.1.4-1~deb10u1)
    依赖: libavutil-dev (= 7:4.1.4-1~deb10u1) 但是它将不会被安装
    依赖: libswresample-dev (= 7:4.1.4-1~deb10u1) 但是它将不会被安装
    libavformat-dev : 依赖: libavformat58 (= 7:4.1.4-1~deb10u1) 但是 7:4.1.4-1+rpt7~deb10u1 正要被安装
    依赖: libavutil-dev (= 7:4.1.4-1~deb10u1) 但是它将不会被安装
    依赖: libswresample-dev (= 7:4.1.4-1~deb10u1) 但是它将不会被安装
    libswscale-dev : 依赖: libavutil-dev (= 7:4.1.4-1~deb10u1) 但是它将不会被安装
    依赖: libswscale5 (= 7:4.1.4-1~deb10u1) 但是 7:4.1.4-1+rpt7~deb10u1 正要被安装
    E: 无法修正错误,因为您要求某些软件包保持现状,就是它们破坏了软件包间的依赖关系

    这里卡了许久,通过网上查到解决方法以及问同学,最后通过卸载之前下载的依赖,以及换源才得以解决

    (2)fatal error: features2d/test/test_detectors_regression.impl.hpp: 没有那个文件或目录

    解决方法:头文件的include路径不对,后来通过修改路径、以及下载一些本来就不存在文件导入才得以解决

    • boostdesc_bgm.i
    • boostdesc_bgm_bi.i
    • boostdesc_bgm_hd.i
    • boostdesc_lbgm.i
    • boostdesc_binboost_064.i
    • boostdesc_binboost_128.i
    • boostdesc_binboost_256.i
    • vgg_generated_120.i
    • vgg_generated_64.i
    • vgg_generated_80.i
    • vgg_generated_48.i

    这些是缺少的文件、网上可以下载到相关文件

    (二)小组成员名单

    学号 姓名 分工
    031702340 张逸杰 实机操作,查阅资料
    031702331 杨锦镔 博客编写,查阅资料
    031702341 黄彬煌 查阅资料,寻找解决方法

    (三)在线协作图片

    本次实验主要采用的是群内分享屏幕,遇到问题大家一起查找资料和解决困难

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  • 原文地址:https://www.cnblogs.com/zyj19991106/p/13064141.html
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