Journal
COMPUTER VISION SYSTEMS, ICVS 2017
Volume 10528, Issue -, Pages 257-267Publisher
SPRINGER INTERNATIONAL PUBLISHING AG
DOI: 10.1007/978-3-319-68345-4_23
Keywords
Gesture recognition; Binocular cameras; Support Vector Machine
Categories
Funding
- Guangdong province science and technology plan projects [2015A020219001, 2017A010101031]
- Fundamental Research Funds for the Central Universities [2015ZM140, 2017MS048]
- Guangzhou Key Laboratory of Robotics and Intelligent Software [15180007]
- Shenzhen basic research projects [JCYJ20160429161539298]
- Guangdong Ministry of Education Foundation [2013B090500093]
- Shenzhen peacock project [KQTD201406 30154026047]
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This paper demonstrates a gesture recognition approach based on binocular camera. The binocular vision system can deal with stereo imaging problem using disparity map. After the cameras are calibrated, the approach uses skin color model and depth information to separate the hand from the environment in the image. And the features of the gestures are extracted by feature extraction algorithm. These gestures as well as their features constitute a set of training examples in machine learning. The Support Vector Machine (SVM), which is supervised learning models, are used to classify these gestures that are labeled with their meaning, such as digits gesture. In training and classification processes, we use the same feature extraction algorithm handling the gesture image and SVM can recognize the meaning of a gesture. The gesture recognition method mentioned in this paper represents a high accuracy in recognizing number gestures.
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