Yolov9 Face Detection Save

Training YOLOv9 for face detection on the WIDER Face dataset

Project README

YOLOv9 for Face Detection

The face detection task identifies and pinpoints human faces in images or videos. This repo demonstrates how to train a YOLOv9 model for highly accurate face detection on the WIDER Face dataset.

⚙️ Installation

Clone this repo and install requirements.txt for YOLOv9:

git clone https://github.com/spacewalk01/yolov9-face-detection
cd yolov9-face-detection/yolov9
pip install -r requirements.txt

🤖 Pretrained Model

Download the pretrained yolov9-c.pt model from google drive. Note that this model was trained on the WIDER dataset for 240 epochs.

📚 Data Preparation

The WIDER dataset comprises of more than 30k images with more than 390k faces, each with bouding box and other various label formats.

Dataset structure

${ROOT}
└── yolov9
└── datasets/    
    └── widerface/
        └── train/
        └── val/
    └── original-widerface/
        └── train/
            └── images/
            └── label.txt
        └── val/
            └── images/
            └── label.txt
└── train2yolo.py
└── val2yolo.py
└── widerface.yaml

To prepare the data:

  1. Download the WIDER-FACE datasets.
  2. Download the annotation files from google drive.

Run the following commands:

python train2yolo.py datasets/original-widerface/train datasets/widerface/train
python val2yolo.py datasets/original-widerface datasets/widerface/val

These scripts will convert your annotation files to YOLO format, creating one .txt file per image. Each row in the file will represent a single object in the format: class x_center y_center width height.

🏋️ Training

To train the model, use the following command:

cd yolov9
python train_dual.py --workers 4 --device 0 --batch 4 --data ../widerface.yaml --img 640 --cfg models/detect/yolov9-c.yaml --weights '' --name yolov9-c --hyp hyp.scratch-high.yaml --min-items 0 --epochs 500 --close-mosaic 15

🌱 Inference

For inference, run the following command:

python detect.py --weights runs/train/yolov9-c5/weights/best.pt --source assets/worlds-largest-selfie.jpg

Or if you want to use the trained model, download it from the above link and run the following command:

python detect.py --weights best.pt --source assets/worlds-largest-selfie.jpg

🔗 Reference

  • YOLOv9 - YOLOv9: Learning What You Want to Learn Using Programmable Gradient Information
  • WIDER FACE - WIDER FACE: A Face Detection Benchmark
  • YOLO5Face - YOLO5Face: Why Reinventing a Face Detector
Open Source Agenda is not affiliated with "Yolov9 Face Detection" Project. README Source: spacewalk01/yolov9-face-detection

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