Multi-view large population gait dataset and its performance evaluation for cross-view gait recognition

被引:306
作者
Takemura N. [1 ]
Makihara Y. [1 ]
Muramatsu D. [1 ]
Echigo T. [2 ]
Yagi Y. [1 ]
机构
[1] Osaka University, Ibaraki
[2] Osaka Electro-Communication University, Neyagawa
基金
日本学术振兴会;
关键词
Gait database; Gait recognition; Multi-view large population performance evaluation;
D O I
10.1186/s41074-018-0039-6
中图分类号
学科分类号
摘要
This paper describes the world’s largest gait database with wide view variation, the “OU-ISIR gait database, multi-view large population dataset (OU-MVLP)”, and its application to a statistically reliable performance evaluation of vision-based cross-view gait recognition. Specifically, we construct a gait dataset that includes 10,307 subjects (5114 males and 5193 females) from 14 view angles ranging 0° −90°, 180° −270°. In addition, we evaluate various approaches to gait recognition which are robust against view angles. By using our dataset, we can fully exploit a state-of-the-art method requiring a large number of training samples, e.g., CNN-based cross-view gait recognition method, and we validate effectiveness of such a family of the methods. © 2018, The Author(s).
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共 45 条
[1]  
Bouchrika I., Goffredo M., Carter J., Nixon M., On using gait in forensic biometrics, J Forensic Sci, 56, 4, pp. 882-889, (2011)
[2]  
Lynnerup N., Larsen P.K., Gait as evidence, IET Biom, 3, 2, pp. 47-54, (2014)
[3]  
Iwama H., Muramatsu D., Makihara Y., Yagi Y., Gait verification system for criminal investigation, IPSJ Trans Comput Vis Appl, 5, pp. 163-175, (2013)
[4]  
Kale A., Roy-Chowdhury A., Chellappa R., Towards a view invariant gait recognition algorithm, Proc. of IEEE Conf. on Advanced Video and Signal Based Surveillance, pp. 143-150, (2003)
[5]  
Makihara Y., Sagawa R., Mukaigawa Y., Echigo T., Yagi Y., Gait recognition using a view transformation model in the frequency domain, Proc. of the 9th European Conference on Computer Vision, pp. 151-163, (2006)
[6]  
Kusakunniran W., Wu Q., Zhang J., Li H., Gait recognition under various viewing angles based on correlated motion regression, IEEE Trans Circ Syst Video Technol, 22, 6, pp. 966-980, (2012)
[7]  
Goffredo M., Bouchrika I., Carter J.N., Nixon M.S., Self-calibrating view-invariant gait biometrics, IEEE Trans Syst Man Cybern B Cybern, 40, 4, pp. 997-1008, (2010)
[8]  
Han J., Bhanu B., Individual recognition using gait energy image, IEEE Trans Pattern Anal Mach Intell, 28, 2, pp. 316-322, (2006)
[9]  
Bashir K., Xiang T., Gong S., Gait recognition without subject cooperation, Pattern Recogn Lett, 31, 13, pp. 2052-2060, (2010)
[10]  
Martin-Felez R., Xiang T., Uncooperative gait recognition by learning to rank, Pattern Recognit, 47, 12, pp. 3793-3806, (2014)