Comparison of Gaussian Hidden Markov Model and Convolutional Neural Network in Sign Language Recognition System

Herman Gunawan, Suharjito, Devriady Pratama
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Abstract

Sign language Recognition is the study to help bridging communication of deaf-mute people. Sign Language Recognition uses techniques to convert gestures of sign language into words or alphabet. In Indonesia, there are two types of sign languages which are used, Bahasa Isyarat Indonesia (BISINDO) and Sistem Isyarat Bahasa Indonesia (SIBI). The purpose of this research is comparing sign language recognition methods between Gaussian Hidden Markov Model and Convolutional Neural Network using indonesian sign language SIBI as a dataset. The dataset comes from 200 videos from 2 signers. Each signer performs 10 signs with 10 repetitions. To improve the recognition accuracy, modified histogram equalization is used as an image enhancement. Skin detection was used to track the movement of the gesture as input features in the Gaussian Hidden Markov Model and fine tuning was used in Convolutional Neural Network using transfer learning, freeze layer, and dropout. The results of the research are the Gaussian Hidden Markov Model provides accuracy value of 84.6% and Convolutional Neural Network provides accuracy value of 82%.
高斯隐马尔可夫模型与卷积神经网络在手语识别中的比较
手语识别是一门帮助聋哑人沟通的研究。手语识别使用技术将手语的手势转换成单词或字母。在印度尼西亚,有两种类型的手语使用,印尼语(BISINDO)和印尼语系统(SIBI)。本研究以印尼语SIBI为数据集,比较高斯隐马尔可夫模型与卷积神经网络的手语识别方法。数据集来自2个签名者的200个视频。每个签名者做10个手势,重复10次。为了提高识别精度,采用改进的直方图均衡化作为图像增强。在高斯隐马尔可夫模型中使用皮肤检测来跟踪手势的运动作为输入特征,并在卷积神经网络中使用迁移学习,冻结层和dropout进行微调。研究结果表明,高斯隐马尔可夫模型的准确率为84.6%,卷积神经网络的准确率为82%。
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