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首页> 外文期刊>Procedia Computer Science >Hand sign recognition from depth images with multi-scale density features for deaf mute persons
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Hand sign recognition from depth images with multi-scale density features for deaf mute persons

机译:手中从深度图像识别具有多尺度密度特征的聋哑静音者

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Among many of the fastest growing research fields, sign language recognition is one of the top. Deaf and dumb community uses sign language to express their ideas or views. Sign Language is a methodical coded language where meanings are assigned to every gestures. Many techniques have been developed with the advancement of science and technology to minimize the problem for speech and hearing disabled. The mode of such communication is part of human computer interaction. Hand gesture plays an important role here. The interaction with computer through gesture removes the use of conventional input devices like mouse and keyboards. To create a strong interface between user and computer, recognition of gesture is important. In this paper, a hand gesture recognition method based on multiscale density features is proposed. Depth images of numerals of American Sign Language are considered in this work and recognition rate of 98.20% is obtained, which is comparable with related state-of-the art methods.
机译:在许多最快的增长研究领域中,手语识别是顶部之一。聋人和愚蠢的社区使用手语来表达他们的想法或观点。手语是一种方法编码语言,其中含义被分配给每个手势。通过科学和技术的进步,已经开发了许多技术,以尽量减少致辞和听证会的问题。这种通信的模式是人机交互的一部分。手势在这里起着重要作用。通过手势与计算机的互动消除了使用鼠标和键盘等传统输入设备的使用。要在用户和计算机之间创建强大的接口,识别手势很重要。本文提出了一种基于多尺度密度特征的手势识别方法。在这项工作中考虑了美国手语的数字的深度图像,获得了98.20%的识别率,其与相关最新方法相当。

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