印尼手语实时静态手势识别系统原型

Rudy Hartanto, A. Susanto, P. Santosa
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引用次数: 10

摘要

手语使用手势代替语音进行交流。然而,很少有正常人为了与聋哑人交流而学习手语。因此,需要从手语到书面或口头语言的翻译变得很重要。在本文中,我们提出了一个可以实时识别手势手语的原型系统。我们使用HSV(色相饱和度值)色彩空间结合皮肤检测去除复杂的背景和创建分割图像。然后利用轮廓检测对手部区域进行定位和节省。在此基础上,利用SURF算法检测并提取关键点特征,并与用户图像数据库进行对比,对每个手势符号字母进行识别。实验表明,该系统能够识别手势符号并翻译成字母,识别率平均为63%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real time static hand gesture recognition system prototype for Indonesian sign language
Sign language uses gestures instead of speech sound to communicate. However, it is rare that the normal people try to learn the sign language for interacting with deaf people. Therefore, the need for a translation from sign language to written or oral language becomes important. In this paper, we propose a prototype system that can recognize the hand gesture sign language in real time. We use HSV (Hue Saturation Value) color space combined with skin detection to remove the complex background and create segmented images. Then a contour detection is applied to localize and save hand area. Further, we use SURF algorithm to detect and extract key point features and recognize each hand gesture sign alphabet by comparing with these user image database. Based on the experiments, the system is capable to recognize hand gesture sign and translate to Alphabets, with recognize rate 63 % in average.
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