SEDMIDUBSKÝ, Jan and Pavel ZEZULA. Augmenting Spatio-Temporal Human Motion Data for Effective 3D Action Recognition. Online. In 21st IEEE International Symposium on Multimedia (ISM). Neuveden: IEEE Computer Society, 2019, p. 204-207. ISBN 978-1-72815-606-4. Available from: https://dx.doi.org/10.1109/ISM46123.2019.00044.
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Basic information
Original name Augmenting Spatio-Temporal Human Motion Data for Effective 3D Action Recognition
Authors SEDMIDUBSKÝ, Jan (203 Czech Republic, guarantor, belonging to the institution) and Pavel ZEZULA (203 Czech Republic, belonging to the institution).
Edition Neuveden, 21st IEEE International Symposium on Multimedia (ISM), p. 204-207, 4 pp. 2019.
Publisher IEEE Computer Society
Other information
Original language English
Type of outcome Proceedings paper
Field of Study 10200 1.2 Computer and information sciences
Confidentiality degree is not subject to a state or trade secret
Publication form electronic version available online
RIV identification code RIV/00216224:14330/19:00107708
Organization unit Faculty of Informatics
ISBN 978-1-72815-606-4
Doi http://dx.doi.org/10.1109/ISM46123.2019.00044
UT WoS 000528909200033
Keywords in English 3D skeleton sequence;multimedia data;data augmentation;action recognition;bidirectional LSTM
Tags DISA, firank_B
Tags International impact, Reviewed
Changed by Changed by: RNDr. Pavel Šmerk, Ph.D., učo 3880. Changed: 12/5/2020 23:41.
Abstract
Action recognition is a fundamental operation in 3D human motion analysis. Existing deep learning classifiers achieve a high recognition accuracy if large amounts of training data are provided. However, such data are difficult to obtain in a variety of application scenarios, mainly due to the high costs of motion capture technologies and an absence of suitable actors. In this paper, we propose augmentation techniques to artificially enlarge existing collections of 3D human skeleton sequences. The proposed techniques are especially useful for datasets distinguishing in a high number of classes, each of them characterized by only a limited number of action samples. We experimentally demonstrate that the augmented data help to significantly increase the recognition accuracy even using a standard deep learning architecture.
Links
GA19-02033S, research and development projectName: Vyhledávání, analytika a anotace datových toků lidských pohybů
Investor: Czech Science Foundation
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