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An efficient static gesture recognizer embedded system based on ELM pattern recognition algorithm

机译:基于ELM模式识别算法的高效静态手势识别器嵌入式系统

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Millions of people throughout the world describe themselves as being deaf. Some of them suffer from severe hearing loss and consequently use an alternative manner with which to communicate with society by means of either written or visual language. There are several sign languages capable of dealing with such a need. Nonetheless, a communication gap still exists even when using such languages, since only a small fraction of the population is able to use them. Over the last few years, due to the increasing need for universal accessibility when using computational resources, gesture recognition has been widely researched. Thus, in an attempt to reduce this communication gap, our approach proposes a computational solution in order to translate static gesture symbols into text symbols, through computer vision, without the use of hand sensors or gloves. In order to guarantee the highest quality, with emphasis on the reliability of the system and real-time translation, we have developed an approach based on the Extreme Learning Machine (ELM) pattern recognition algorithms fully implemented in hardware, and have assessed it to measure these two metrics. Hardware components were designed in order to perform the best image processing and pattern recognition tasks used within the project. As a case study, and so as to validate the technique, a recognition system for the Brazilian Sign Language (LIBRAS) was implemented. Besides ensuring that this approach could be used for any static hand gesture symbol recognition, our main goal was to guarantee fast, reliable gesture recognition for communication between humans. Experimental results have demonstrated that the system is able to recognize LIBRAS symbols with an accuracy of 97%, a response time of 6.5ms per letter recognition, and using only 43% (about 64,851 logic elements) of the FPGA area. (C) 2016 Elsevier B.V. All rights reserved.
机译:全世界有数百万人形容自己为聋人。他们中的一些人患有严重的听力损失,因此使用替代的方式,通过书面或视觉语言与社会进行交流。有几种手语可以满足这种需求。但是,即使使用这种语言,沟通差距仍然存在,因为只有一小部分人能够使用它们。在过去的几年中,由于在使用计算资源时对通用可访问性的需求不断增长,因此对手势识别进行了广泛的研究。因此,为了减小这种通信差距,我们的方法提出了一种计算解决方案,以便通过计算机视觉将静态手势符号转换为文本符号,而无需使用手部传感器或手套。为了保证最高的质量,重点是系统的可靠性和实时翻译,我们开发了一种基于完全在硬件中实现的极限学习机(ELM)模式识别算法的方法,并对其进行了评估以进行测量这两个指标。设计硬件组件是为了执行项目中使用的最佳图像处理和模式识别任务。作为一个案例研究,为了验证该技术,实施了巴西手语(LIBRAS)识别系统。除了确保可以将这种方法用于任何静态手势符号识别之外,我们的主要目标是保证人与人之间通信的快速,可靠的手势识别。实验结果表明,该系统能够以97%的精度识别LIBRAS符号,每个字母识别的响应时间为6.5ms,并且仅使用FPGA区域的43%(约64,851个逻辑元素)。 (C)2016 Elsevier B.V.保留所有权利。

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