语音病理识别的低频带连续语音系统

Hugo Cordeiro, C. Meneses
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引用次数: 5

摘要

本文描述了信号带宽降低对语音病理识别的影响。所实施的系统对健康受试者、被诊断为喉部生理性病理的受试者和被诊断为喉部神经肌肉病理的受试者进行3类识别评估。连续语音信号下采样至4khz,提取的频谱参数应用于GMM分类器。准确度没有明显的变化,可以得出结论,低频包含足够的信息,可以进行病理分类。第二个目标是测试抑制语音活动检测和增加分析窗口长度的效果。在这两种情况下,准确率都有所提高。综上所述,本文提出了一种基于4 kHz采样信号,不进行语音活动检测,分析窗口长度为40 ms的病理语音识别系统,准确率为81.8%。该系统还具有减少存储内存和处理时间的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low band continuous speech system for voice pathologies identification
This paper describes the impact of the signal bandwidth reduction in the identification of voice pathologies. The implemented systems evaluate the identification of 3 classes divided by healthy subjects, subjects diagnosed with physiological larynx pathologies and subjects diagnosed with neuromuscular larynx pathologies. Continuous speech signals are down-sampled to 4 kHz and the extracted spectral parameters are applied to a GMM classifier. No significant change in accuracy occurs, being possible to conclude that the low frequencies contain sufficient information to allow the classification of pathologies. A second objective is to test the effects of suppressing the voice activity detection and the increasing the analysis window length. In both cases the accuracy increases. In conclusion, a pathological voice identification system based on signals sampled at 4 kHz, without voice activity detection and with an analysis window length of 40 ms is proposed, getting 81.8% accuracy. The proposed system has also the advantage of reduces the storage memory and the processing time.
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