Publication | Closed Access
Skeletonmae: Spatial-Temporal Masked Autoencoders for Self-Supervised Skeleton Action Recognition
47
Citations
18
References
2023
Year
EngineeringMachine LearningHuman Pose Estimation3D Pose EstimationVideo InterpretationKinesiologyImage AnalysisPattern RecognitionSelf-supervised LearningMasked Skeleton SequencesRobot LearningNovel Masking StrategyVideo TransformerSpatial-temporal Masked AutoencodersSpatial-temporal MaskingMachine VisionVideo UnderstandingDeep LearningComputer Vision
Self-supervised skeleton-based action recognition has attracted more attention in recent years. By utilizing the unlabeled data, more generalizable features can be learned to alleviate the overfitting problem and reduce the demand for massive labeled training data. Inspired by the MAE [1], we propose a spatial-temporal masked autoencoder framework for self-supervised 3D skeleton-based action recognition (SkeletonMAE). Following MAE's masking and reconstruction pipeline, we utilize a skeleton-based encoder-decoder transformer architecture to reconstruct the masked skeleton sequences. A novel masking strategy, named Spatial-Temporal Masking, is introduced in terms of both joint-level and frame-level for the skeleton sequence. This pre-training strategy makes the encoder output generalizable skeleton features with spatial and temporal dependencies. Given the unmasked skeleton sequence, the encoder is fine-tuned for the action recognition task. Extensive experiments show that our SkeletonMAE achieves remarkable performance and outperforms the state-of-the-art methods on both NTU RGB+D 60 and NTU RGB+D 120 datasets.
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