手势的时空识别与动作扩展

D. Kelly, J. McDonald, C. Markham
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引用次数: 30

摘要

提出了一种新的手语手势时空识别系统。有效符号序列的识别是机器手语识别总体目标中的重要任务,而动作扩展识别是实现自然手语连续识别的重要步骤。我们提出了一个识别有效符号片段和识别运动扩展的框架。实验表明,该系统在对8种不同的手势进行分类和识别100种不同类型的运动扩张时表现良好。系统分类性能的ROC分析显示,曲线下测量面积为0.949。
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Recognizing Spatiotemporal Gestures and Movement Epenthesis in Sign Language
A novel system for the recognition of spatiotemporal hand gestures used in sign language is presented. While recognition of valid sign sequences is an important task in the overall goal of machine recognition of sign language, recognition of movement epenthesis is an important step towards continuous recognition of natural sign language. We propose a framework for recognizing valid sign segments and identifying movement epenthesis. Experiments show our proposed system performs well when classifying eight different signs and identifying 100 different types of movement epenthesis. A ROC analysis of the systems classifications performance showed an area under the curve measurement of 0.949.
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