Development of high quality speech compression system for Quranic recitation based on modified CELP algorithm

T. Gunawan, M. Kartiwi
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引用次数: 2

Abstract

Currently, there are more than 500 Quranic recitations available freely on the internet. There is also a growing trends on the use of smart phone compare to traditional desktop PCs for accessing the internet. On such limited device, a high quality speech compression for Quranic recitation is favorable. In this paper, we developed a high quality speech compression for Quranic recitation by modifying Code Excited Linear Prediction (CELP) algorithm. First, the characteristics of the Quranic recitation of all surahs was evaluated in which it was found that the voiced speech is more dominant compare to unvoiced speech. Next, we optimize CELP algorithm based on previous findings by modifying the original stochastic codebook. Instead of random Gaussian signal, we trained the codebook using LBG algorithm for Surah Al-Fatihah, and used the trained codebook for the whole Quran. Lastly, we evaluate the performance of the developed algorithm objectively using PESQ (Perceptual Evaluation of Speech Quality). Results showed that our proposed algorithm performs better than the traditional CELP algorithm, in terms of PESQ score and processing time.
基于改进CELP算法的古兰经背诵高质量语音压缩系统的开发
目前,互联网上有500多篇免费的《古兰经》背诵。与传统的台式电脑相比,使用智能手机上网的趋势也在不断增长。在这种有限的设备上,高质量的语音压缩对古兰经背诵是有利的。本文通过改进编码激励线性预测(CELP)算法,开发了一种用于古兰经背诵的高质量语音压缩算法。首先,对古兰经诵读各章节的特点进行了评价,发现浊音语音比浊音语音更占优势。接下来,我们基于先前的研究结果,通过修改原始随机码本来优化CELP算法。我们使用LBG算法来训练编码本,而不是随机的高斯信号,并将训练好的编码本用于整本古兰经。最后,我们使用PESQ(语音质量感知评价)客观地评价了所开发算法的性能。结果表明,本文提出的算法在PESQ得分和处理时间上都优于传统的CELP算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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