Title :
Latent Multitask Learning for View-Invariant Action Recognition
Author :
Mahasseni, Behrooz ; Todorovic, Sinisa
Author_Institution :
Oregon State Univ., Corvallis, OR, USA
Abstract :
This paper presents an approach to view-invariant action recognition, where human poses and motions exhibit large variations across different camera viewpoints. When each viewpoint of a given set of action classes is specified as a learning task then multitask learning appears suitable for achieving view invariance in recognition. We extend the standard multitask learning to allow identifying: (1) latent groupings of action views (i.e., tasks), and (2) discriminative action parts, along with joint learning of all tasks. This is because it seems reasonable to expect that certain distinct views are more correlated than some others, and thus identifying correlated views could improve recognition. Also, part-based modeling is expected to improve robustness against self-occlusion when actors are imaged from different views. Results on the benchmark datasets show that we outperform standard multitask learning by 21.9%, and the state-of-the-art alternatives by 4.5-6%.
Keywords :
cameras; image recognition; learning (artificial intelligence); motion estimation; action classes; action estimation; camera viewpoints; discriminative action parts; human motions; human poses; latent multitask learning; part-based modeling; self-occlusion; view-invariant action recognition; Accuracy; Cameras; Closed-form solutions; Feature extraction; Optimization; Standards; Training; Action Recognition; Multitask Learning; View-Invariant;
Conference_Titel :
Computer Vision (ICCV), 2013 IEEE International Conference on
Conference_Location :
Sydney, VIC
DOI :
10.1109/ICCV.2013.388