基于压缩感知技术的缺失数据输入连接数字识别

J. Gemmeke, B. Cranen
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引用次数: 15

摘要

提高自动语音识别噪声鲁棒性的有效方法是在解码前将有噪声的语音特征标记为可靠或不可靠(缺失),并用干净的语音估计替换缺失的语音特征。我们提出了一种基于压缩感知技术的新方法来获得这些干净的语音估计。与以前逐帧工作的imputation框架不同,我们的方法侧重于从大的时间背景中挖掘信息。使用滑动窗口方法,使用可靠特征的稀疏表示来构建去噪的语音表示,这些特征来自于一个干净的、固定长度的语音样本的过完备字典。我们通过在AURORA-2连接数字数据库上的实验证明了我们的方法的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Missing data imputation using compressive sensing techniques for connected digit recognition
An effective way to increase the noise robustness of automatic speech recognition is to label noisy speech features as either reliable or unreliable (missing) prior to decoding, and to replace the missing ones by clean speech estimates. We present a novel method based on techniques from the field of Compressive Sensing to obtain these clean speech estimates. Unlike previous imputation frameworks which work on a frame-by-frame basis, our method focuses on exploiting information from a large time-context. Using a sliding window approach, denoised speech representations are constructed using a sparse representation of the reliable features in an overcomplete dictionary of clean, fixed-length speech exemplars. We demonstrate the potential of our approach with experiments on the AURORA-2 connected digit database.
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