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Upper-limit evaluation of robot audition based on ICA-BSS in multi-source, barge-in and highly reverberant conditions

机译:多源,插入和高混响条件下基于ICA-BSS的机器人试听上限评估

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This paper presents the upper-limit evaluation of robot audition based on ICA-BSS in multi-source, barge-in and highly reverberant conditions. The goal is that the robot can automatically distinguish a target speech from its own speech and other sound sources in a reverberant environment. We focus on the multi-channel semi-blind ICA (MCSB-ICA), which is one of the sound source separation methods with a microphone array, to achieve such an audition system because it can separate sound source signals including reverberations with few assumptions on environments. The evaluation of MCSB-ICA has been limited to robot's speech separation and reverberation separation. In this paper, we evaluate MCSB-ICA extensively by applying it to multi-source separation problems under common reverberant environments. Experimental results prove that MCSB-ICA outperforms conventional ICA by 30 points in automatic speech recognition performance.
机译:本文介绍了基于ICA-BSS在多源,驳船和高度混响条件下的ICA-BS的机器人试镜的上限评估。目标是,机器人可以自动区分目标语音从其自身的语音和其他声源在混响环境中。我们专注于多通道半盲ICA(MCSB-ICA),它是具有麦克风阵列的声源分离方法之一,以实现这样的试听系统,因为它可以分离声源信号,包括少数假设的混响。环境。 MCSB-ICA的评估仅限于机器人的语音分离和混响分离。在本文中,我们通过将MCSB-ICA应用于普通的混响环境下的多源分离问题进行了广泛的。实验结果证明,MCSB-ICA在自动语音识别性能中以30分表示常规ICA。

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