Speech Segment Clustering for Real-Time Exemplar-Based Speech Enhancement

David Nesbitt, D. Crookes, J. Ming
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引用次数: 2

Abstract

Exemplar-based (or Corpus-based) speech enhancement algorithms have great potential but are typically slow due to needing to search through the entire corpus. The properties of speech can be exploited to improve these algorithms. Firstly, a corpus can be clustered by a phonetic ordering into a search tree which can be used to find a best matching segment. This dramatically reduces the search space, reducing the time complexity of searching a corpus of $n$ segments from O(n) to O(log(n)). Secondly, clustering can be used to give a lossy compression of a speech corpus by replacing original segments with codewords. These techniques are shown in comparison with sequential search and non-compressed corpora using a simple speech enhancement algorithm. A combination of these techniques for a corpus of a quarter of WSJO results in a speedup of approximately 3000x.
基于实例的实时语音增强的语音片段聚类
基于范例(或基于语料库)的语音增强算法具有很大的潜力,但由于需要搜索整个语料库,通常速度很慢。可以利用语音的特性来改进这些算法。首先,将语料库按语音排序聚类成搜索树,通过搜索树找到最佳匹配词段;这极大地减少了搜索空间,将搜索$n$段的语料库的时间复杂度从O(n)降低到O(log(n))。其次,聚类可以通过用码字替换原始片段来对语音语料库进行有损压缩。使用简单的语音增强算法将这些技术与顺序搜索和非压缩语料库进行比较。对于四分之一的WSJO语料库,这些技术的组合将导致大约3000倍的加速。
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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