CSA-BF:一种用于真实汽车环境下语音增强和识别的约束开关自适应波束形成器

Xianxian Zhang, J. Hansen
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引用次数: 33

摘要

虽然许多研究已经研究了车载语音系统的各种语音增强和处理方案,但很少有研究使用在嘈杂的汽车环境中收集的实际语音数据进行研究。在本文中,我们提出了一种新的约束切换自适应波束形成算法(CSA-BF),用于真实移动汽车环境下的语音增强和识别。该算法由语音/噪声约束部分、语音自适应波束形成器和噪声自适应波束形成器组成。我们使用来自美国各地的各种汽车噪声环境中记录的数据语料库来研究CSA-BF算法在现实汽车条件下的性能,并将其与经典的延迟和波束形成(DASB)进行比较。在分析实验结果并考虑到汽车环境中复杂噪声情况的范围后,我们使用CU-Move语料库制定了CSA-BF算法的三个具体处理阶段。经过评估和证明,该方法可以同时将语音识别的单词错误率(WER)降低高达31%,并通过SEGSNR测量平均提高高达+5.5 dB的语音质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CSA-BF: a constrained switched adaptive beamformer for speech enhancement and recognition in real car environments
While a number of studies have investigated various speech enhancement and processing schemes for in-vehicle speech systems, little research has been performed using actual voice data collected in noisy car environments. In this paper, we propose a new constrained switched adaptive beamforming algorithm (CSA-BF) for speech enhancement and recognition in real moving car environments. The proposed algorithm consists of a speech/noise constraint section, a speech adaptive beamformer, and a noise adaptive beamformer. We investigate CSA-BF performance with a comparison to classic delay-and-sum beamforming (DASB) in realistic car conditions using a corpus of data recorded in various car noise environments from across the U.S. After analyzing the experimental results and considering the range of complex noise situations in the car environment using the CU-Move corpus, we formulate the three specific processing stages of the CSA-BF algorithm. This method is evaluated and shown to simultaneously decrease word-error-rate (WER) for speech recognition by up to 31% and improve speech quality via the SEGSNR measure by up to +5.5 dB on the average.
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