Publication | Closed Access
MoLo: Motion-Augmented Long-Short Contrastive Learning for Few-Shot Action Recognition
83
Citations
55
References
2023
Year
Unknown Venue
Few-shot LearningEngineeringMachine LearningMotion LearningVideo RetrievalVideo InterpretationImage AnalysisPattern RecognitionRobot LearningVideo TransformerMotion AutodecoderSource CodeMachine VisionComputer ScienceVideo UnderstandingDeep LearningComputer VisionFew-shot Action RecognitionVideo Hallucination
Current state-of-the-art approaches for few-shot action recognition achieve promising performance by conducting frame-level matching on learned visual features. However, they generally suffer from two limitations: i) the matching procedure between local frames tends to be inaccurate due to the lack of guidance to force long-range temporal perception; ii) explicit motion learning is usually ignored, leading to partial information loss. To address these issues, we develop a Motion-augmented Long-short Contrastive Learning (MoLo) method that contains two crucial components, including a long-short contrastive objective and a motion autodecoder. Specifically, the long-short contrastive objective is to endow local frame features with long-form temporal awareness by maximizing their agreement with the global token of videos belonging to the same class. The motion autodecoder is a lightweight architecture to reconstruct pixel motions from the differential features, which explicitly embeds the network with motion dynamics. By this means, MoLo can simultaneously learn long-range temporal context and motion cues for comprehensive few-shot matching. To demonstrate the effectiveness, we evaluate MoLo on five standard benchmarks, and the results show that MoLo favorably outperforms recent advanced methods. The source code is available at https://github.com/alibaba-mmai-research/MoLo.
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