Litcius/Paper detail

PYSKL: Towards Good Practices for Skeleton Action Recognition

Haodong Duan, Jiaqi Wang, Kai Chen, Dahua Lin

2022Proceedings of the 30th ACM International Conference on Multimedia168 citationsDOI

Abstract

We present PYSKL: an open-source toolbox for skeleton-based action recognition based on PyTorch. The toolbox supports a wide variety of skeleton action recognition algorithms, including approaches based on GCN and CNN. In contrast to existing open-source skeleton action recognition projects that include only one or two algorithms, PYSKL implements six different algorithms under a unified framework with both the latest and original good practices to ease the comparison of efficacy and efficiency. We also provide an original GCN-based skeleton action recognition model named ST-GCN++, which achieves competitive recognition performance without any complicated attention schemes, serving as a strong baseline. Meanwhile, PYSKL supports the training and testing of nine skeleton-based action recognition benchmarks and achieves state-of-the-art recognition performance on eight of them. To facilitate future research on skeleton action recognition, we also provide a large number of trained models and detailed benchmark results to give some insights. PYSKL is released at https://github.com/kennymckormick/pyskl and is actively maintained.

Topics & Concepts

Computer scienceSkeleton (computer programming)Benchmark (surveying)ToolboxArtificial intelligenceAction recognitionMachine learningAction (physics)Variety (cybernetics)Pattern recognition (psychology)Programming languageClass (philosophy)GeodesyGeographyQuantum mechanicsPhysicsHuman Pose and Action RecognitionHand Gesture Recognition SystemsAnomaly Detection Techniques and Applications