基于视觉的机器学习的印尼手语拼写识别

Nurrahma Nurrahma, Rahadian Yusuf, A. Prihatmanto
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引用次数: 1

摘要

手语是聋哑人通常使用的一种用手势进行交流的方法。在印度尼西亚,有两种手语,即SIBI和BISINDO。然而,在日常生活中,BISINDO更常被使用。聋人与健全人之间经常出现沟通障碍。所以我们需要媒体来架起他们沟通的桥梁。其中一个可以使用的技术是SLR(手语识别)。单反本身有多种方法,其中一种是基于视觉的单反。基于视觉的单反相机有一个优势,比如不需要在手头上固定一个特殊的设备,只需要在相机前徒手做手势就可以了。在这项研究中,我们创建了一个基于视觉的单反方法的机器学习模型。我们创建的模型使用CNN(卷积神经网络)架构。CNN模型在我们自己创建的BISINDO字母表(A-Z)数据集上进行了训练和测试。该模型验证精度为99.28%,测试精度为98.57%,实时测试精度为98.07%。
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Indonesian Sign Language Fingerspelling Recognition using Vision-based Machine Learning
Sign language is a method of communication using hand gestures that are usually used by Deaf people. In Indonesia, there are 2 types of sign language, namely SIBI and BISINDO. However, in everyday life, BISINDO is more often used. Communication gaps often occur between Deaf people and hearing people. So that we need media that can bridge their communication. one of the technologies that can be used is SLR (Sign Language Recognition). SLR itself has various kinds of approaches, one of which is a vision-based SLR. Vision-based SLR has an advantage, such as not requiring a special device attached to the hand, but simply making gestures with bare hands in front of the camera. In this study, we created a machine learning model with a vision-based SLR approach. The model we created was using the CNN (Convolutional Neural Network) architecture. The CNN model was trained and tested on the BISINDO alphabet (A-Z) dataset that we created on our own. This model achieves an accuracy of 99.28% on validation accuracy, 98.57% on testing accuracy, and 98.07% on real-time testing accuracy.
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