Object Localization and Detecting Alphabet in Sign Language BISINDO Using Convolution Neural Network

None Yisti Vita Via, None Wahyu S. J. Saputra, None Mohammad Idham Fachrurrozi, None Eva Yulia Puspaningrum, None Fetty Tri Anggraeny, None Salamun Rohman Nudin
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Abstract

The BISINDO sign language is used to help deaf and mute people communicate with other people. However, not everyone is able to understand the meaning of this sign language. A system that implements artificial intelligence methods is created to solve this problem. The system uses a Convolution Neural Network algorithm with object localization techniques to detect and classify the alphabet in each form of the BISINDO finger signal. The Region Convolution Neural Network (RCNN) algorithm is used to process object localization and the CNN algorithm will perform classification process. This system is trained using 64 training data and tested using 16 test data for each type of alphabet. The results of the system testing that have been carried out are able to provide excellent accuracy values, which are above 90 percent for a training epoch of at least 50. These results produce an accuracy of 90.10% and 97.33% respectively.
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基于卷积神经网络的手语BISINDO目标定位与字母检测
BISINDO手语是用来帮助聋哑人与其他人交流的。然而,并不是每个人都能理解这种手语的含义。一个实现人工智能方法的系统被创建来解决这个问题。该系统使用卷积神经网络算法和物体定位技术来检测和分类BISINDO手指信号中每种形式的字母。使用区域卷积神经网络(RCNN)算法处理目标定位,CNN算法进行分类处理。该系统使用64个训练数据进行训练,并对每种类型的字母使用16个测试数据进行测试。已经执行的系统测试的结果能够提供极好的准确度值,对于至少为50的训练历元,其准确度高于90%。准确度分别为90.10%和97.33%。
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