ica波束形成框架中MUSIC-group延迟方法在多源环境下语音分离中的意义

L. Kumar, Kushagra Singhal, R. Sinha, R. Hegde
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引用次数: 0

摘要

多源环境下ica波束形成框架的性能通常受到到达方向(DOA)估计分辨率和排列误差的限制。本文提出了一种利用MUSIC-Group时延法进行DOA估计的框架。为此定义了一个新的代价函数,以MUSIC-Group延迟法恢复的信号为参考,迭代计算ICA和波束形成方法恢复的信号之间的相关性。然后使用该代价函数在每次迭代中选择解混矩阵,直到满足收敛准则。然后使用最终的解混矩阵进行源分离。由于MUSIC-Group延迟方法具有较高的分辨率,因此可以更有效地对得到的DOA估计进行排序,从而解决ICA中的排列问题。将TIMIT语音数据在不同直混响能量比(DRR)的混响环境下进行空间化处理,得到S-TIMIT数据。针对S-TIMIT数据中两个说话人的混合语音进行了基于说话人的大词汇量语音识别实验。与传统的ICA和ICA波束形成方法相比,使用该方法的目标和非目标说话人对应的单词错误率显示出合理的改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Significance of the MUSIC-group delay method in an ICA-Beamforming framework for speech separation in multi source environments
The performance of an ICA-Beamforming framework in multi source environments is often limited by the resolution of the direction of arrival (DOA) estimation and by permutation errors. In this paper a framework that addresses these issues, using the MUSIC-Group delay method of DOA estimation has been described. A new cost function defined for this purpose iteratively computes the correlation between the signals recovered using ICA and beamforming methods with signals recovered from the MUSIC-Group delay method as a reference. This cost function is then used to select the demixing matrix at each iteration until a convergence criterion is met. Source separation is then carried out using the final demixing matrix. Since the MUSIC-Group delay method exhibits high resolution, the DOA estimates obtained can be sorted more effectively to solve the permutation problems in ICA. TIMIT speech data is spatialized under a reverberant environment at various direct-to-reverberant energy ratio (DRR) to obtain S-TIMIT data. Experiments on speaker dependent large vocabulary speech recognition are conducted for a mixture of two speakers from the S-TIMIT data. The word error rates corresponding to the target and the non-target speaker using the proposed method indicate reasonable improvements when compared to conventional methods like ICA and ICA-Beamforming methods.
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