Article ID Journal Published Year Pages File Type
387642 Expert Systems with Applications 2012 6 Pages PDF
Abstract

This paper presents Handy, a real-time hand gesture recognizer based on a three color glove. The recognizer is formed by three modules. The first module, fed by the frame acquired by a webcam, identifies the hand image in the scene. The second module, a feature extractor, represents the image by a nine-dimensional feature vector. The third module, the classifier, is performed by means of learning vector quantization. The recognizer, tested on a dataset of 907 hand gestures, has shown very high recognition rate.

► The paper presents Handy, a real-time color glove-based hand gesture recognizer. ► Handy requires low-cost resources such as a netbook and a webcam. ► Handy uses leaning vector quantization, as classifier. ► Handy, tested on a dataset of 900 gestures, has shown very high recognition rates.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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