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Decoupled Representation Learning for Skeleton-Based Gesture Recognition

Jianbo Liu, Yongcheng Liu, Ying Wang, V. Prinet, Shiming Xiang, Chunhong Pan

202097 citationsDOI

Abstract

Skeleton-based gesture recognition is very challenging, as the high-level information in gesture is expressed by a sequence of complexly composite motions. Previous works often learn all the motions with a single model. In this paper, we propose to decouple the gesture into hand posture variations and hand movements, which are then modeled separately. For the former, the skeleton sequence is embedded into a 3D hand posture evolution volume (HPEV) to represent fine-grained posture variations. For the latter, the shifts of hand center and fingertips are arranged as a 2D hand movement map (HMM) to capture holistic movements. To learn from the two inhomogeneous representations for gesture recognition, we propose an end-to-end two-stream network. The HPEV stream integrates both spatial layout and temporal evolution information of hand postures by a dedicated 3D CNN, while the HMM stream develops an efficient 2D CNN to extract hand movement features. Eventually, the predictions of the two streams are aggregated with high efficiency. Extensive experiments on SHREC'17 Track, DHG-14/28 and FPHA datasets demonstrate that our method is competitive with the state-of-the-art.

Topics & Concepts

GestureComputer scienceGesture recognitionHidden Markov modelArtificial intelligenceMovement (music)Sequence (biology)Representation (politics)Computer visionSkeleton (computer programming)Pattern recognition (psychology)Speech recognitionPoliticsPhilosophyAestheticsBiologyLawPolitical scienceGeneticsProgramming languageHand Gesture Recognition SystemsHuman Pose and Action RecognitionGait Recognition and Analysis
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