Survey of video behavior recognition

被引:0
|
作者
Luo H. [1 ]
Wang C. [1 ]
Lu F. [1 ]
机构
[1] School of Information Engineering, Jiangxi University of Science and Technology, Ganzhou
来源
| 2018年 / Editorial Board of Journal on Communications卷 / 39期
基金
中国国家自然科学基金;
关键词
Behavior recognition; Data set; Deep network; Handcrafted;
D O I
10.11959/j.issn.1000-436x.2018107
中图分类号
学科分类号
摘要
Behavior recognition is developing rapidly, and a number of behavior recognition algorithms based on deep network automatic learning features have been proposed. The deep learning method requires a large number of data to train, and requires higher computer storage and computing power. After a brief review of the current popular behavior recognition method based on deep network, it focused on the traditional behavior recognition methods. Traditional behavior recognition methods usually followed the processes of video feature extraction, modeling of features and classification. Following the basic process, the recognition process was overviewed according to the following steps, feature sampling, feature descriptors, feature processing, descriptor aggregation and vector coding. At the same time, the benchmark data set commonly used for evaluating the algorithm performance was also summarized © 2018, Editorial Board of Journal on Communications. All right reserved.
引用
收藏
页码:169 / 180
页数:11
相关论文
共 89 条
  • [1] Moeslund T.B., Hilton A., Kruger V., A survey of advances in vision-based human motion capture and analysis, Computer Vision & Image Understanding, 104, 2, pp. 90-126, (2006)
  • [2] Cheng G.C., Wan Y.F., Saudagar A.N., Et al., Advances in human action recognition: a survey, Computer Science, 2015, 1, pp. 1-30, (2015)
  • [3] Ji X., Liu H., Advances in view-invariant human motion analysis: a review, IEEE Transactions on Systems Man & Cybernetics Part C, 40, 1, pp. 13-24, (2009)
  • [4] Dhamsania C.J., Ratanpara T.V., A survey on human action recognition from videos, Online International Conference on Green Engineering and Technologies, pp. 1-5, (2017)
  • [5] Candamo J., Shreve M., Goldgof D.B., Et al., Understanding transit scenes: a survey on human behavior recognition algorithms, IEEE Transactions on Intelligent Transportation Systems, 11, 1, pp. 206-224, (2010)
  • [6] Poppe R., A survey on vision-based human action recognition, Image & Vision Computing, 28, 6, pp. 976-990, (2010)
  • [7] Weinland D., Ronfard R., Boyer E., A survey of vision-based methods for action representation, segmentation and recognition, Computer Vision & Image Understanding, 115, 2, pp. 224-241, (2011)
  • [8] Chaudhary A., Raheja J.L., Das K., Et al., A survey on hand gesture recognition in context of soft computing, International Conference on Computer Science and Information Technology, pp. 46-55, (2011)
  • [9] Laptev I., On space-time interest points, International Journal of Computer Vision, 64, 2-3, pp. 107-123, (2005)
  • [10] Harris C.J., A combined corner and edge detector, Proc Alvey Vision Conf, 1988, 3, pp. 147-151, (1988)