首页> 外文期刊>Journal of Theoretical and Applied Information Technology >COMBINING DECISION TREE AND BACK PROPAGATION GENETIC ALGORITHM NEURAL NETWORK FOR RECOGNIZING WORD GESTURES IN INDONESIAN SIGN LANGUAGE USING KINECT
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COMBINING DECISION TREE AND BACK PROPAGATION GENETIC ALGORITHM NEURAL NETWORK FOR RECOGNIZING WORD GESTURES IN INDONESIAN SIGN LANGUAGE USING KINECT

机译:决策树与反向传播遗传算法神经网络结合KINECT识别印尼手语中的手势

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Sign language is a media for speech and/or hearing problems people to communicate. Different kind of sign languages exist in the world such as Indonesian Sign Language (ISL), American Sign Language (ASL), Chinese Sign Language (CSL), British Sign Language (BSL), Brazilian Sign Language (BSL), and France Sign Language (FSL). In Indonesia, the used of ISL was less extensive because not all people understand it. People that do not have understanding on ISL cannot translate it. Therefore an ISL translation system is required. Many researches about sign language translation system had been done for FSL, BSL, FSL, and CSL. However, research on ISL is still limited and still need development. Therefore we proposed a new system for recognizing ISL word gestures. In this research we captured user skeleton by using Kinect. From those skeletons only nine skeletons were used as feature by computing their vector value, angle value, and distance value. Totally 28 features were extracted. Then the combination of Decision Tree and Back Propagation Neural Network (BPGANN) was implemented for classifier. For experiment, eight ISL vocabularies were tested by two people. The recognition accuracy of this system, although evaluated with small vocabulary, presents very promising result with value 96%.
机译:手语是人们交流言语和/或听力问题的媒介。世界上存在不同种类的手语,例如印度尼西亚手语(ISL),美国手语(ASL),中国手语(CSL),英国手语(BSL),巴西手语(BSL)和法国手语(FSL)。在印度尼西亚,ISL的使用不太广泛,因为并不是所有人都了解它。对ISL不了解的人无法翻译它。因此,需要一个ISL翻译系统。对FSL,BSL,FSL和CSL进行了许多有关手语翻译系统的研究。但是,对ISL的研究仍然很有限,仍然需要发展。因此,我们提出了一种用于识别ISL单词手势的新系统。在这项研究中,我们使用Kinect捕获了用户骨架。通过计算这些骨骼的向量值,角度值和距离值,仅将它们用作特征的九个骨骼。总共提取了28个特征。然后将决策树和反向传播神经网络(BPGANN)相结合进行分类。为了进行实验,两个人测试了八个ISL词汇。该系统的识别准确度虽然用很小的词汇量进行了评估,但是却获得了非常有希望的结果,价值为96%。

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