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Evaluation of a novel fuzzy sequential pattern recognition tool (fuzzy elastic matching machine) and its applications in speech and handwriting recognition

机译:一种新型模糊序列模式识别工具(模糊弹性匹配机)及其在语音和手写识别中的应用

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Sequential pattern recognition has long been an important topic of soft computing research with a wide area of applications including speech and handwriting recognition. In this paper, the performance of a novel fuzzy sequential pattern recognition tool named "Fuzzy Elastic Matching Machine" has been investigated. This tool overcomes the shortcomings of the HMM including its inflexible mathematical structure and inconsistent mathematical assumptions with imprecise input data. To do so, "Fuzzy Elastic Pattern" was introduced as the basic element of FEMM. It models the elasticity property of input data using fuzzy vectors. A sequential pattern such as a word in speech or a piece of writing is treated as a sequence of parts in which each part has an elastic nature (i.e. can skew or stretch depending on the speaker/writer's style). To present FEMM as a sequential pattern recognition tool, three basic problems, including evaluation, assignment, and training problems, were defined and their solutions were presented for FEMMs. Finally, we implemented FEMM for speech and handwriting recognition on some large databases including TIMIT database and Dr. Kabir's Persian handwriting database. In speech recognition, FEMM achieved 71% and 75.5% recognition rates in phone and word recognition, respectively. Also, 75.9% recognition accuracy was obtained in Persian handwriting recognition. The results indicated 18.2% higher recognition speed and 9-16% more immunity to noise in speech recognition in addition to 5% higher recognition rate in handwriting recognition compared to the HMM. (C) 2017 Elsevier B.V. All rights reserved.
机译:顺序模式识别长期以来一直是软计算研究的重要主题,具有广泛的应用程序,包括语音和手写识别。在本文中,研究了名为“模糊弹性匹配机”的新型模糊顺序模式识别工具的性能。该工具克服了HMM的缺点,包括其不灵活的数学结构和具有不精确输入数据的数学假设。为此,将引入“模糊弹性模式”作为FEMM的基本元素。它使用模糊矢量模拟输入数据的弹性特性。诸如语音中的单词或写入中的单词的顺序图案被视为各部分具有弹性性质的部分(即,根据扬声器/作家的风格歪斜或延伸)。将FEMM作为顺序模式识别工具,定义了三个基本问题,包括评估,分配和培训问题,并为FEMMS提供了它们的解决方案。最后,我们在一些大型数据库中实现了讲话和手写识别的emm,包括Timit数据库和Kabir博士的波斯手写数据库。在语音识别中,FEMM分别在电话和单词识别中实现了71%和75.5%的识别率。此外,在波斯手写识别中获得了75.9%的识别准确性。结果表明,与HMM相比,识别速度较高的识别速度较高的识别速度增加18.2%,对语音识别的噪声增加9-16%。 (c)2017 Elsevier B.v.保留所有权利。

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