Skip to content

RizwanMunawar/yolov7-object-tracking

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

63 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

yolov7-object-tracking

New Features

  • Added Label for Every Track
  • Code can run on Both (CPU & GPU)
  • Video/WebCam/External Camera/IP Stream Supported

Coming Soon

  • Development of streamlit dashboard for Object Tracking

Ready to Use Google Colab

Steps to run Code

  • Clone the repository.
git clone https://github.com/RizwanMunawar/yolov7-object-tracking.git
  • Goto the cloned folder.
cd yolov7-object-tracking
  • Create a virtual envirnoment (Recommended, If you dont want to disturb python packages)
### For Linux Users
python3 -m venv yolov7objtracking
source yolov7objtracking/bin/activate

### For Window Users
python3 -m venv yolov7objtracking
cd yolov7objtracking
cd Scripts
activate
cd ..
cd ..
  • Upgrade pip with mentioned command below.
pip install --upgrade pip
  • Install requirements with mentioned command below.
pip install -r requirements.txt
  • Run the code with mentioned command below (by default, pretrained yolov7 weights will be automatically downloaded into the working directory if they don't already exist).
# for detection only
python detect.py --weights yolov7.pt --source "your video.mp4"

#if you want to change source file
python detect_and_track.py --weights yolov7.pt --source "your video.mp4"

#for WebCam
python detect_and_track.py --weights yolov7.pt --source 0

#for External Camera
python detect_and_track.py --weights yolov7.pt --source 1

#For LiveStream (Ip Stream URL Format i.e "rtsp://username:pass@ipaddress:portno/video/video.amp")
python detect_and_track.py --source "your IP Camera Stream URL" --device 0

#for specific class (person)
python detect_and_track.py --weights yolov7.pt --source "your video.mp4" --classes 0

#for colored tracks 
python detect_and_track.py --weights yolov7.pt --source "your video.mp4" --colored-trk

#for saving tracks centroid, track id and bbox coordinates
python detect_and_track.py --weights yolov7.pt --source "your video.mp4" --save-txt --save-bbox-dim
  • Output file will be created in the working-dir/runs/detect/obj-tracking with original filename

Results

YOLOv7 Detection Only YOLOv7 Object Tracking with ID YOLOv7 Object Tracking with ID and Label

References

My Medium Articles

For more details, you can reach out to me on Medium or can connect with me on LinkedIn