Litcius/Paper detail

Temporal Cross-Layer Correlation Mining for Action Recognition

Linchao Zhu, Hehe Fan, Yawei Luo, Mingliang Xu, Yi Yang

2021IEEE Transactions on Multimedia81 citationsDOI

Abstract

Neighboring frames are more correlated compared to frames from further temporal distances. In this paper, we aim to explore the temporal correlations among neighboring frames and exploit cross-layer multi-scale features for action recognition. First, we present a Temporal Cross-Layer Correlation (TCLC) framework for temporal correlation learning. The unified framework uncovers both local and global structures from video data, enabling a better exploration of temporal context and assisting cross-layer spatio-temporal feature learning. Second, we propose a novel cross-layer attention and a center-guided attention mechanism to integrate features with contextual knowledge from multiple scales. Our method is a two-stage process for effective cross-layer feature learning. The first stage incorporates the cross-layer attention module to decide the importance weight of the convolutional layers. The second stage leverages the center-guided attention mechanism to aggregate local features from each layer for the generation of a final video representation. We leverage global centers to extract shared semantic knowledge among videos. We evaluate TCLC on three action recognition datasets, i.e., UCF-101, HMDB-51 and Kinetics. Our experimental results demonstrate the superiority of our proposed temporal correlation mining method.

Topics & Concepts

Computer scienceLeverage (statistics)CorrelationArtificial intelligenceFeature learningFeature extractionExploitPattern recognition (psychology)Layer (electronics)Context (archaeology)Feature (linguistics)Machine learningOrganic chemistryComputer securityMathematicsBiologyPhilosophyChemistryGeometryLinguisticsPaleontologyHuman Pose and Action RecognitionGait Recognition and AnalysisHand Gesture Recognition Systems