3D N-best search for simultaneous recognition of distant-talking speech of multiple talkers

Satoshi Nakamura, P. Heracleous
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引用次数: 4

Abstract

A microphone array is a promising solution for realizing hands-free speech recognition in real environments. Accurate talker localization is very important for speech recognition using the microphone array. However, localization of a moving talker is difficult in noisy reverberant environments. Talker localization errors degrade the performance of speech recognition. To solve the problem, we proposed a new speech recognition algorithm which considers multiple talker direction hypotheses simultaneously. The proposed algorithm performs Viterbi search in 3-dimensional trellis space composed of talker directions, input frames, and HMM states. In this paper we describe a new simultaneous recognition algorithm for distant-talking speech of multiple talkers using the extended 3D N-best search algorithm. The algorithm exploits path distance-based clustering and a likelihood normalization technique appeared to be necessary in order to build an efficient system for our purpose. We evaluated the proposed method using reverberated data, which are those simulated by the image method and recorded in a real room. The image method was used to find the accuracy-reverberation time relationship, and real data was used to evaluate the real performance of our algorithm. The Top 3 result of simultaneous word accuracy was 73.02% under 162 ms reverberation time using the image method.
三维n -最佳搜索同时识别多说话人的远距离谈话语音
麦克风阵列是在现实环境中实现免提语音识别的一种很有前途的解决方案。准确的说话人定位对于使用麦克风阵列进行语音识别非常重要。然而,在嘈杂的混响环境中,移动说话者的定位是很困难的。说话者定位错误会降低语音识别的性能。为了解决这个问题,我们提出了一种同时考虑多个说话人方向假设的语音识别算法。该算法在由通话者方向、输入帧和HMM状态组成的三维网格空间中进行维特比搜索。本文提出了一种基于扩展的三维n -最优搜索算法的多人远程语音同时识别算法。该算法利用基于路径距离的聚类和似然归一化技术似乎是必要的,以便为我们的目的建立一个有效的系统。我们使用混响数据来评估所提出的方法,混响数据是通过图像方法模拟并在真实房间中记录的数据。利用图像法找出精度与混响时间的关系,并用实际数据对算法的真实性能进行评价。在混响时间为162 ms时,图像法的同时词正确率前3名为73.02%。
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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