Intelligent visual mouse system based on hand pose trajectory recognition in video sequences

被引:0
作者
Behnam Maleki
Hossein Ebrahimnezhad
机构
[1] Sahand University of Technology,Computer Vision Res. Lab, Faculty of Electrical Engineering
来源
Multimedia Systems | 2015年 / 21卷
关键词
Human–computer interaction; Dynamic hand gesture recognition; Hand tracking; Feature extraction from trajectory; Vision-based virtual mouse;
D O I
暂无
中图分类号
学科分类号
摘要
Hand gesture recognition based on computer vision is considered as an efficient approach to establish communication between human and computer. This research provides a novel system to recognize dynamic hand gestures as different functions of mouse. For this purpose, a white glove is utilized in which fingertips have five different colors. Then, based on the functions of the mouse, 11 dynamic hand gestures are defined. In order to track the hand in each frame, the optical flow and GMM algorithms are used. Then, by using the mean and variance of the colors in each RGB plane, trajectories of the fingertips are detected. To make the acquired information richer, the Representative Trajectory of these five trajectories is computed. Features are extracted from the curves through a process inspired by the concept of shape context. In this process, each trajectory is normalized and then the histogram of extracted vector from normalized curve is calculated in a log-polar space. Thus, by this descriptor, a feature vector with length of 672 is created. Using the defined 11 dynamic gestures, a dataset including 220 observations is constructed and by using the aforementioned features, the relevant training matrix is formed. By employing PCA and Sequential Feature Selection techniques, dimension of the feature vector is reduced. For the experiment, different classifiers are applied and the experimental results confirm the privileged performance of the proposed system for the intelligent visual mouse.
引用
收藏
页码:581 / 601
页数:20
相关论文
共 36 条
[1]  
Lee JY(2010)Hand gesture-based tangible interactions for manipulating virtual objects in a mixed reality environment Int. J. Adv. Manuf. Technol. 51 1069-1082
[2]  
Rhee GW(2008)Recent developments in visual sign language recognition Univ. Access Inf. Soc. 6 323-362
[3]  
Seo DW(2009)A review of vision based hand gestures recognition Int. J. Inf. Technol. Knowl. Manag. 2 405-410
[4]  
Agris UV(2003)Recognition of dynamic hand gestures Pattern Recogn. 36 2069-2081
[5]  
Zieren J(2008)SURF: speeded up robust features Comput. Vision Image. Underst. (CVIU) 110 346-359
[6]  
Canzler U(2011)Dynamic hand gesture recognition: an exemplar-based approach from motion divergence fields Image Vis. Comput. 30 227-235
[7]  
Bauer B(2011)Model-based segmentation and recognition of dynamic gestures in continuous video streams Pattern Recogn. 44 1614-1628
[8]  
Kraiss K-F(1992)Performance of optical flow techniques IEEE 1 236-242
[9]  
Murthy GRS(2010)A variational approach to monocular hand-pose estimation Comput. Vis. Image Underst. 114 363-372
[10]  
Jadon RS(2011)A human-machine interaction technique: hand gesture recognition based on hidden markov models with trajectory of hand motion Procedia Eng 15 3739-3743