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Cited 4 time in webofscience Cited 11 time in scopus
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Body-part-aware and multitask-aware single-image-based action recognition

Authors
Bhandari B.Lee G.Cho J.
Issue Date
Feb-2020
Publisher
MDPI AG
Keywords
Action recognition; Convolutional neural network; Deep learning; Multitask learning; Pose estimation
Citation
Applied Sciences (Switzerland), v.10, no.4
Journal Title
Applied Sciences (Switzerland)
Volume
10
Number
4
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/26381
DOI
10.3390/app10041531
ISSN
2076-3417
Abstract
Action recognition is an application that, ideally, requires real-time results. We focus on singleimage- based action recognition instead of video-based because of improved speed and lower cost of computation. However, a single image contains limited information, which makes single-image-based action recognition a difficult problem. To get an accurate representation of action classes, we propose three feature-stream-based shallow sub-networks (image-based, attention-image-based, and part-imagebased feature networks) on the deep pose estimation network in a multitasking manner. Moreover, we design the multitask-aware loss function, so that the proposed method can be adaptively trained with heterogeneous datasets where only human pose annotations or action labels are included (instead of both pose and action information), which makes it easier to apply the proposed approach to new data on behavioral analysis on intelligent systems. In our extensive experiments, we showed that these streams represent complementary information and, hence, the fused representation is robust in distinguishing diverse fine-grained action classes. Unlike other methods, the human pose information was trained using heterogeneous datasets in a multitasking manner; nevertheless, it achieved 91.91% mean average precision on the Stanford 40 Actions Dataset. Moreover, we demonstrated the proposed method can be flexibly applied to multi-labels action recognition problem on the V-COCO Dataset. © 2020 by the authors.
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