Hockey Rink Keypoint Detection
๐ This model is trained on the HockeyRink dataset.
- ๐ Access the dataset used for training here: https://huggingface.co/datasets/SimulaMet-HOST/HockeyRink
- ๐ Try the model in action with our interactive Hugging Face Space: https://huggingface.co/spaces/SimulaMet-HOST/HockeyRink
This repository contains a YOLOv8-based model for detecting and mapping keypoints on ice hockey rinks. The model is trained on the HockeyRink dataset, which comprises precise annotations of hockey rink landmarks.
Features
- Accurate detection of 56 keypoint landmarks on hockey rinks
- Real-time keypoint visualization with confidence scores
- Support for various camera angles and lighting conditions
- Handles player occlusions and dynamic game situations
- Trained on diverse SHL (Swedish Hockey League) game footage
Model Details
- Architecture: YOLOv8-Large pose estimation
- Input: RGB images (any resolution)
- Output: 56 keypoint coordinates with confidence scores
- Average Performance:
- [email protected]: 97.48%
- [email protected]:0.95: 76.45%
- Precision: 96.21%
- Recall: 96.24%
Applications
- Camera calibration and homography estimation
- 2D/3D scene mapping
- Player tracking and analysis
- Broadcast overlay generation
- Game analytics and statistics
- AR/VR applications
Model Performance
- Performance tested across different hardware setups
- 13.64 FPS on Tesla T4 GPU
- 6.4 FPS on M3 MacBook Pro
- Handles varying lighting conditions and occlusions
๐ฉ For any questions regarding this project, or to discuss potential collaboration and joint research opportunities, please contact:
- Mehdi Houshmand: [email protected]
- Cise Midoglu: [email protected]
- Pรฅl Halvorsen: [email protected]
Inference Providers
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