学习记录之使用opencv部署yolov7

首先感谢大佬提供的开源代码:

GitHub - hpc203/yolov7-opencv-onnxrun-cpp-py: 分别使用OpenCV、ONNXRuntime部署YOLOV7目标检测,一共包含14个onnx模型,依然是包含C++和Python两个版本的程序

opencv的编译和安装可参考我之前写的博客:

Ubuntu下载、配置、安装和编译opencv_Cassiel_cx的博客-CSDN博客

部署方法一

使用g++将opencv链接到“yolov7-opencv-onnxrun-cpp-py/opencv/main.cpp”

1、在终端查询opencv版本信息

pkg-config --modversion opencv4

2、查询opencv的头文件路径

pkg-config --cflags opencv4

## 输出
-I/usr/local/include/opencv4
# -I表示头文件路径

3、查询opencv的链接库路径

pkg-config --libs opencv4

## 输出
-L/usr/local/lib -lopencv_gapi -lopencv_highgui -lopencv_ml -lopencv_objdetect -lopencv_photo -lopencv_stitching -lopencv_video -lopencv_calib3d -lopencv_features2d -lopencv_dnn -lopencv_flann -lopencv_videoio -lopencv_imgcodecs -lopencv_imgproc -lopencv_core
# -L表示链接库路径

4、使用g++生成可执行文件并运行该文件

cd opencv
g++ -o main main.cpp -I/usr/local/include/opencv4 -L/usr/local/lib -lopencv_gapi -lopencv_highgui -lopencv_ml -lopencv_objdetect -lopencv_photo -lopencv_stitching -lopencv_video -lopencv_calib3d -lopencv_features2d -lopencv_dnn -lopencv_flann -lopencv_videoio -lopencv_imgcodecs -lopencv_imgproc -lopencv_core
./main

5、运行结果

部署方法二

使用cmake和make生成可执行文件

cd yolov7-opencv-onnxrun-cpp-py/opencv

1、在“yolov7-opencv-onnxrun-cpp-py/opencv”下新建CMakeLists.txt,并写入以下内容

cmake_minimum_required(VERSION 3.0)
 
project( YOLOV7 )

# 使用find_package()指令,系统会在环境变量下寻找相关文件
find_package( OpenCV REQUIRED )
# 如果需要指定特定版本的opencv,则SET (OpenCV_DIR path/to/opencv/build)

include_directories( ${OpenCV_INCLUDE_DIRS} )

add_executable( YOLOV7 main.cpp )
 
target_link_libraries( YOLOV7 ${OpenCV_LIBS} )

2、使用cmake生成Makefile

cmake .

3、使用make生成可执行文件并运行该文件

make
./YOLOV7

4、运行结果

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转载自blog.csdn.net/qq_38964360/article/details/129838301