51 lines
2.2 KiB
Markdown
51 lines
2.2 KiB
Markdown
# 人体检测和跟踪(Ultralytics YOLO Pose)算法部署流程:用MIPI摄像头发布为照片
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1. 配置tros.b环境
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source /opt/tros/humble/setup.bash
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2. 从tros.b的安装路径中拷贝出运行示例需要的配置文件。
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cp -r /opt/tros/${TROS_DISTRO}/lib/mono2d_body_detection/config/ .
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3. 配置MIPI摄像头
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export CAM_TYPE=mipi
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4. 启动launch文件
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ros2 launch mono2d_body_detection mono2d_body_detection.launch.py kps_model_type:=1 kps_image_width:=1920 kps_image_height:=1080 kps_model_file_name:=config/yolo11x_pose_nashe_640x640_nv12.hbm
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5. 测试效果
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运行成功后在pc端游览器输入:[http://IP:8000](http://ip:8000/),即可查看图像和算法渲染效果(IP为RDK的IP地址)
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# 人体检测和跟踪(Ultralytics YOLO Pose)算法部署流程:用usb摄像头发布为照片
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1. 配置tros.b环境
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source /opt/tros/humble/setup.bash
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2. 从tros.b的安装路径中拷贝出运行示例需要的配置文件。
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cp -r /opt/tros/${TROS_DISTRO}/lib/mono2d_body_detection/config/ .
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3. 配置usb摄像头
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export CAM_TYPE=usb
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4. 启动launch文件
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ros2 launch mono2d_body_detection mono2d_body_detection.launch.py kps_model_type:=1 kps_image_width:=1920 kps_image_height:=1080 kps_model_file_name:=config/yolo11x_pose_nashe_640x640_nv12.hbm
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5. 测试效果
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在PC端的浏览器输入[http://IP:8000](http://ip:8000/) 即可查看图像和算法渲染效果(IP为RDK的IP地址)
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# 人体检测和跟踪(Ultralytics YOLO Pose)算法部署流程:使用本地照片回灌
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1. 配置tros.b环境
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source /opt/tros/humble/setup.bash
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2. 从tros.b的安装路径中拷贝出运行示例需要的配置文件。
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cp -r /opt/tros/${TROS_DISTRO}/lib/mono2d_body_detection/config/ .
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cp -r /opt/tros/${TROS_DISTRO}/lib/dnn_node_example/config/ .
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3. 配置本地回灌图片
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export CAM_TYPE=fb
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4. 启动launch文件
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ros2 launch mono2d_body_detection mono2d_body_detection.launch.py publish_image_source:=config/person_body.jpg publish_image_format:=jpg kps_model_type:=1 kps_image_width:=640 kps_image_height:=640 kps_model_file_name:=config/yolo11x_pose_nashe_640x640_nv12.hbm
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5. 测试效果
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在PC端的浏览器输入[http://IP:8000](http://ip:8000/) 即可查看图像和算法渲染效果(IP为RDK的IP地址) |