基于压缩感知的缺失数据输入鲁棒说话人识别

X. Rui
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引用次数: 1

摘要

本文研究了噪声条件下基于压缩感知新兴领域的说话人识别系统前端缺失数据补全方法。首先,利用人工耳蜗滤波技术将含噪语音信号转换为γ matone频谱;然后,给出一组不完全可靠谱元,对不可靠谱元进行重构;最后,从重构的伽玛酮谱数据中提取具有听觉模型的说话人特征。实验结果表明,该方法可以提高噪声环境下说话人识别的准确率。
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Missing data imputation based on compressive sensing for robust speaker identification
In this paper, the method of missing data imputation based on the emergent field of compressive sensing for the front end of a speaker identification system in noisy conditions is investigated. Firstly, noisy speech signals are transformed into Gammatone spectrum by using cochlear filtering; then, unreliable spectral components are reconstructed given an incomplete set of reliable ones; finally, speaker features with auditory model are extracted from reconstructed Gammatone spectral data. Experimental results demonstrate that our method can improve the identification accuracy of speaker identification in noisy environments.
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