基于卷积神经网络的古兰经手语分类研究进展

Muhamad Nizam, S. M. Saad, M. A. Suhaimi, M. Dzahir, S. Rahim, M. Dzahir
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引用次数: 1

摘要

手语是聋哑人使用的主要交流形式。他们的大部分活动,比如;说话、阅读和学习都涉及到手语。为了阅读《古兰经》,聋哑人用阿拉伯手语阅读《古兰经》。对他们来说,辅助技术帮助他们在学习和教授古兰经的过程中是非常重要的,因为传统的方法非常困难和具有挑战性。其中一个原因是,传统上,教师需要先了解阿拉伯手语(ArSL),才能教他们学习《古兰经》。目前,辅助技术还被认为是比较新的,没有得到很好的发展。在马来西亚和印度尼西亚,大多数发达的技术是移动应用程序和基于网络的设备,它们都需要持续的互联网连接,只适合个人使用。以往对辅助技术的研究可以分为两类设备。首先是基于传感器的设备,其次是基于图像的设备。两者都有各自的优点和缺点。对于这个项目,唯一的基于图像的设备是专注的,因为这个项目的范围仅限于监督机器学习(卷积神经网络,CNN),在训练和测试中准确率超过80%。CNN模型的准确性可以通过训练和测试得到的结果模式来解释。接下来,得到的模式可以描述为过拟合、欠拟合或最优。该项目表明,通过基于结果模式的适当调优超参数,可以提高模型的准确性。由于没有正式的技术,这个CNN模型是通过试错调整方法从零开始开发的。最后,将CNN模型转换为Tensorflow Lite格式,可以随时与移动应用程序集成。
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Development of Al-Quran sign language classification based on convolutional neural network
Sign language is the main form of communication used by deaf people. Most of their activities, like; speaking, reading, and learning, involved sign languages. For reading Al-Quran, deaf people used Arabic sign language to read the ayah Al-Quran. For them, assistive technologies to aid them in the process of learning and teaching of Al-Quran is very important, since the traditional method is very difficult and challenging. One of the reasons is that, traditionally, teachers need to know Arabic Sign Languages (ArSL) first in order to teach them to learn Al-Quran. Currently, assistive technology, it still considered to be relatively new and not well developed. In Malaysia and Indonesia, most of the developed technologies are mobile app, and web-based device, which both of them required continuous internet connection and only suitable for personal used. Previous research on assistive technologies can be classified into two types of devices. First, a sensor-based device, and second is the image-based device. Both of them have their advantages and disadvantages. For this project, the only image-based device is focused since the scope of this project is limited to supervised machine learning (Convolution neural network, CNN) that developed with accuracy above 80% in training and testing. The accuracy of CNN model can be explained based on the resulting pattern obtained from the training and testing. Next, the resulting pattern can be described as overfitting, underfitting, or optimum. This project shows that, with the appropriate tuning of hyperparameters based on the resulting pattern, the accuracy of the model can be improved. This CNN model is developed from scratch through trial and error tuning method since there are no formal techniques. Lastly, the CNN model is converted into a Tensorflow Lite format, which can ready to be integrated with mobile applications.
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