SIR Beam Selector for Amazon Echo Devices Audio Front-End

Xianxian Zhang, T. Kristjansson, Philip Hilmes
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Abstract

The Audio Front-End (AFE) is a key component in mitigating acoustic environmental challenges for far-field automatic speech recognition (ASR) on Amazon Echo family of products. A critical component of the AFE is the Beam Selector, which identifies which beam points to the target user. In this paper, we proposed a new SIR beam selector that utilizes subband-based signal-to-interference ratios to learn the locations of the audio sources and therefore further improve the beam selection accuracy for multi-microphone based AFE system. We analyzed the performance of a Signal to Interference Ratio (SIR) beam selector with a comparison to classic beam selector using the datasets collected under various conditions. This method is evaluated and shown to simultaneously decrease word-error-rate (WER) for speech recognition by up to 46.20% and improve barge-in performance via FRR by up to 39.18%.
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SIR光束选择器为亚马逊回声设备音频前端
音频前端(AFE)是亚马逊Echo系列产品中减轻远场自动语音识别(ASR)声学环境挑战的关键组件。AFE的一个关键组件是波束选择器,它确定哪个波束指向目标用户。在本文中,我们提出了一种新的SIR波束选择器,它利用基于子带的信干扰比来学习音源的位置,从而进一步提高了基于多麦克风的AFE系统的波束选择精度。利用在不同条件下收集的数据集,分析了信号干扰比(SIR)波束选择器的性能,并与经典波束选择器进行了比较。该方法被评估并证明可以同时将语音识别的单词错误率(WER)降低46.20%,并通过FRR提高驳船性能高达39.18%。
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