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Accurate Temporal Action Proposal Generation with Relation-Aware Pyramid Network

Jialin Gao, Zhixiang Shi, Guanshuo Wang, Jiani Li, Yufeng Yuan, Shiming Ge, Xi Zhou

2020Proceedings of the AAAI Conference on Artificial Intelligence75 citationsDOIOpen Access PDF

Abstract

Accurate temporal action proposals play an important role in detecting actions from untrimmed videos. The existing approaches have difficulties in capturing global contextual information and simultaneously localizing actions with different durations. To this end, we propose a Relation-aware pyramid Network (RapNet) to generate highly accurate temporal action proposals. In RapNet, a novel relation-aware module is introduced to exploit bi-directional long-range relations between local features for context distilling. This embedded module enhances the RapNet in terms of its multi-granularity temporal proposal generation ability, given predefined anchor boxes. We further introduce a two-stage adjustment scheme to refine the proposal boundaries and measure their confidence in containing an action with snippet-level actionness. Extensive experiments on the challenging ActivityNet and THUMOS14 benchmarks demonstrate our RapNet generates superior accurate proposals over the existing state-of-the-art methods.

Topics & Concepts

Computer scienceGranularitySnippetExploitPyramid (geometry)Relation (database)Context (archaeology)Action (physics)Scheme (mathematics)Artificial intelligenceRange (aeronautics)Data miningInformation retrievalMathematicsComputer securityPaleontologyOperating systemQuantum mechanicsGeometryBiologyMaterials sciencePhysicsMathematical analysisComposite materialHuman Pose and Action RecognitionMultimodal Machine Learning ApplicationsHuman Motion and Animation
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