yolov5 deepsort 行人 车辆 跟踪 检测 计数

Overview

yolov5 deepsort 行人 车辆 跟踪 检测 计数

  • 实现了 出/入 分别计数。
  • 默认是 南/北 方向检测,若要检测不同位置和方向,可在 main.py 文件第13行和21行,修改2个polygon的点。
  • 默认检测类别:行人、自行车、小汽车、摩托车、公交车、卡车。
  • 检测类别可在 detector.py 文件第60行修改。

视频

bilibili

bilibili

运行环境

  • python 3.6+,pip 20+
  • pytorch
  • pip install -r requirements.txt

如何运行

  1. 下载代码

    $ git clone https://github.com/dyh/unbox_yolov5_deepsort_counting.git
    

    因此repo包含weights及mp4等文件,若 git clone 速度慢,可直接下载zip文件:https://github.com/dyh/unbox_yolov5_deepsort_counting/archive/main.zip

  2. 进入目录

    $ cd unbox_yolov5_deepsort_counting
    
  3. 创建 python 虚拟环境

    $ python3 -m venv venv
    
  4. 激活虚拟环境

    $ source venv/bin/activate
    
  5. 升级pip

    $ python -m pip install --upgrade pip
    
  6. 安装pytorch

    根据你的操作系统、安装工具以及CUDA版本,在 https://pytorch.org/get-started/locally/ 找到对应的安装命令。我的环境是 ubuntu 18.04.5、pip、CUDA 11.0。

    $ pip install torch==1.7.1+cu110 torchvision==0.8.2+cu110 torchaudio===0.7.2 -f https://download.pytorch.org/whl/torch_stable.html
    
  7. 安装软件包

    $ pip install -r requirements.txt
    
  8. 在 main.py 文件中第66行,设置要检测的视频文件路径,默认为 './video/test.mp4'

    140MB的测试视频可以在这里下载:https://pan.baidu.com/s/1geqjht-no0iyzQ88JQopwA 密码: i6cs

    capture = cv2.VideoCapture('./video/test.mp4')
    
  9. 运行程序

    python main.py
    

引用

Owner
Unbox AI
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