基于粒子群优化的GSM数字语音独立分量分割方法

S. M. Mirrezaie, K. Faez, Amir Asnaashari, Ali Ziaei
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引用次数: 0

摘要

自适应多速率(AMR)编解码器在1999年被GSM标准化。AMR通过根据信道条件调整语音和信道编码,在错误鲁棒性方面比以前的GSM语音编解码器有了实质性的改进。自适应多速率语音编解码器是ETSI和3GPP采用的IMT-2000标准,由8个码率为4.75 ~ 12.2 kbit/s的源编解码器组成。在本文中,我们提出了一种包含粒子群优化(PSO)的方法,该方法对音频记录的可能片段进行编码,并测量这些片段与音频数据之间的相互信息。该度量被用作PSO的适应度函数。对粒子群解进行了压缩编码,减小了粒子群个体的长度,提高了粒子群的收敛性。该算法在两组实际数据上进行了AMR格式的说话人分割测试,在所有测试问题上都取得了很好的效果。结果已与广泛使用的基于遗传算法的几种实际情况进行了比较。没有对语音信号特征的先验知识做出假设。然而,我们假设说话者不会同时说话,并且我们没有实时限制。
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A Particle Swarm Optimization-Based Approach to Speaker Segmentation Based on Independent Component Analysis on GSM Digital Speech
Adaptive Multi-Rate (AMR) codec was standardized for GSM in 1999. AMR offers substantial improvement over previous GSM speech codecs in error robustness by adapting speech and channel coding depending on channel conditions. The Adaptive Multi-Rate speech codec is adopted as a standard for IMT-2000 by ETSI and 3GPP and consists of eight source codecs with bit rates from 4.75 to 12.2 kbit/s. In this paper, we present an approach comprising of particle swarm optimization (PSO), which encodes possible segmentations of an audio record, and measures mutual information between these segments and the audio data. This measure is used as the fitness function for the PSO. A compact encoding of the solution for PSO which decreases the length of the PSO individuals and enhances the PSO convergence properties is adopted. The algorithm has been tested on two actual sets of data with AMR format for speaker segmentation, obtaining very good results in all test problems. The results have been compared to the widely used a genetic algorithm-based in several practical situations. No assumptions have been made about prior knowledge of speech signal characteristics. However, we assume that the speakers do not speak simultaneously and that we have no real-time constraints.
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