Skip to content

This vehicle identification project utilizes the YOLOv5 deep learning model for detecting and classifying vehicles from images, videos, and live streams. It supports real-time inference, saving outputs with bounding boxes, confidence scores, and class labels, making it ideal for traffic monitoring and smart surveillance systems.

License

Notifications You must be signed in to change notification settings

Keval10github/Vehicle-Detection

Repository files navigation

Vehicle Detection

Vehicle Detection Using Deep Learning and YOLO Algorithm.

(Train YOLO v5 on a Custom Dataset)

Dataset

take or find vehicle images for create a special dataset for fine-tuning.

Train : 70%

Validition : 20%

Test : 10%

Clone Vehicle-Detection Repository

cd Vehicle-Detection
pip install -r requirements.txt

wandb

to have mAP, loss, confusion matrix, and other metrics, sign in www.wandb.ai.

pip install wandb

Train

fine-tuning on a pre-trained model of yolov5.

python train.py --img 640 --batch 16 --epochs 50 --data dataset.yaml --weights yolov5m.pt

Test

after train, gives you weights of train and you should use them for test.

python detect.py --weights runs/train/exp12/weights/best.pt --source test_images/imtest13.JPG

you can also use the weight file in path 'runs/train/exp12/weights/best.pt' without the train. this weight is the result of 128 epoch train on the following dataset.

My Vehicle Dataset

https://b2n.ir/vehicleDataset

Team Members

1. Jay Rajodiya - Programming Analyst
2. Parthvi Rathod - Research & Development lead
3. Keval Ravani - Team & Programming Lead
4. Sneha Ramudu - Research & Documentation Analyst
5. Yashasvi Jain - Supporting  Research Analyst

About

This vehicle identification project utilizes the YOLOv5 deep learning model for detecting and classifying vehicles from images, videos, and live streams. It supports real-time inference, saving outputs with bounding boxes, confidence scores, and class labels, making it ideal for traffic monitoring and smart surveillance systems.

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published