基于线性预测和神经网络的java字符语音转文本引擎的有效阅读

Z. Othman, Z. Razak, N. A. Abdullah, M. Y. B. M. Yusoff.
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引用次数: 10

摘要

爪哇语是马来语的旧版本,需要保存。因此,开发用于教孩子学习java字符的工具非常重要,而STT应用程序可以很好地满足这一目的。与英语不同,java使用类似于阿拉伯字符的特殊字符。然而,它的发音是马来语。这种独特性使得STT开发成为一项具有挑战性的任务。本文研究了线性预测编码在提取语音信号重要特征方面的适用性,以及神经网络反向传播对爪哇语语音分类识别的适用性。从说话者口中记录了225个爪哇文字样本,准确率超过95%。javi Characters Speech-To-Text Engine旨在帮助学生准确独立地阅读javi文档,而无需父母或老师的密切监控。
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Jawi Character Speech-to-Text Engine Using Linear Predictive and Neural Network for Effective Reading
Jawi is an old version of Malay Language Writing that need to be preserved. Therefore, it is important to develop tools for teaching kids about Jawi characters and Speech-To-Text (STT) application can serve this purpose well. Unlike English, Jawi uses special characters similar to Arabic Characters. However, its pronunciations are in Malay Language. This uniqueness makes STT development a challenging task. In this paper, we investigate the applicability of Linear Predictive Coding to extract important features from voice signal and Neural Network with Backpropagation to classify and recognize spoken words into Jawi Characters. A total of 225 samples of words in Jawi Characters are recorded from speakers with over 95% accuracy. Jawi Characters Speech-To-Text Engine aims to help students to read Jawi document accurately and independently without the need for close monitoring from parents or teachers.
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