Does Human Action Recognition Benefit from Pose Estimation?
Author(s) -
Angela Yao,
Jüergen Gall,
Gabriele Fanelli,
Luc Van Gool
Publication year - 2011
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.25.67
Subject(s) - computer science , action (physics) , action recognition , pose , artificial intelligence , estimation , computer vision , machine learning , engineering , physics , systems engineering , quantum mechanics , class (philosophy)
Early works on human action recognition focused on tracking and classifying articulated body motions. Such methods required accurate localisation of body parts, which is a difficult task, particularly under realistic imaging conditions. As such, recent trends have shifted towards the use of more abstract, low-level appearance features such as spatio-temporal interest points. Motivated by the recent progress in pose estimation, we feel that pose-based action recognition systems warrant a second look. In this paper, we address the question of whether pose estimation is useful for action recognition or if it is better to train a classifier only on low-level appearance features drawn from video data. We compare pose-based, appearance-based and combined pose and appearance features for action recognition in a home-monitoring scenario. Our experiments show that posebased features outperform low-level appearance features, even when heavily corrupted by noise, suggesting that pose estimation is beneficial for the action recognition task.
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