Litcius/Paper detail

Arbitrary-View Human Action Recognition: A Varying-View RGB-D Action Dataset

Yanli Ji, Yang Yang, Fumin Shen, Heng Tao Shen, Wei‐Shi Zheng

2020IEEE Transactions on Circuits and Systems for Video Technology39 citationsDOI

Abstract

Current researches of action recognition which focus on single-view and multi-view recognition can hardly satisfy the requirements of human-robot interaction (HRI) applications for recognizing human actions from arbitrary views. Arbitrary-view recognition is still a challenging issue due to view changes and visual occlusions. In addition, the lack of datasets also sets up barriers. To provide data for arbitrary-view action recognition, we collect a new large-scale RGB-D action dataset for arbitrary-view action analysis, including RGB videos, depth and skeleton sequences. The dataset includes action samples captured in 8 fixed viewpoints and varying-view sequences which cover the entire 360° view angles. In total, 118 persons are invited to act 40 action categories. Our dataset involves more participants, more viewpoints and a large number of samples. More importantly, it is the first dataset containing the entire 360° varying-view sequences. The dataset provides sufficient data for multi-view, cross-view and arbitrary-view action analysis. Besides, we propose a View-guided Skeleton CNN (VS-CNN) to tackle the problem of arbitrary-view action recognition. Experiment results show that the VS-CNN achieves superior performance, and our dataset provides valuable but challenging data for the evaluation of arbitrary-view recognition.

Topics & Concepts

Computer scienceViewpointsArtificial intelligenceRGB color modelAction recognitionAction (physics)Focus (optics)Pattern recognition (psychology)Computer visionImage (mathematics)Machine learningOpticsQuantum mechanicsVisual artsArtClass (philosophy)PhysicsHuman Pose and Action RecognitionHand Gesture Recognition SystemsMultimodal Machine Learning Applications
Arbitrary-View Human Action Recognition: A Varying-View RGB-D Action Dataset | Litcius