Multimodal Attention Fusion for Target Speaker Extraction

Hiroshi Sato, Tsubasa Ochiai, K. Kinoshita, Marc Delcroix, T. Nakatani, S. Araki
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引用次数: 18

Abstract

Target speaker extraction, which aims at extracting a target speaker’s voice from a mixture of voices using audio, visual or locational clues, has received much interest. Recently an audio-visual target speaker extraction has been proposed that extracts target speech by using complementary audio and visual clues. Although audio-visual target speaker extraction offers a more stable performance than single modality methods for simulated data, its adaptation towards realistic situations has not been fully explored as well as evaluations on real recorded mixtures. One of the major issues to handle realistic situations is how to make the system robust to clue corruption because in real recordings both clues may not be equally reliable, e.g. visual clues may be affected by occlusions. In this work, we propose a novel attention mechanism for multi-modal fusion and its training methods that enable to effectively capture the reliability of the clues and weight the more reliable ones. Our proposals improve signal to distortion ratio (SDR) by 1.0 dB over conventional fusion mechanisms on simulated data. Moreover, we also record an audio-visual dataset of simultaneous speech with realistic visual clue corruption and show that audio-visual target speaker extraction with our proposals successfully work on real data.
基于多模态注意力融合的目标说话人提取
目标说话人提取是一种利用音频、视觉或位置线索从混合声音中提取目标说话人声音的方法,近年来受到广泛关注。近年来提出了一种视听目标说话人提取方法,即利用互补的视听线索提取目标说话人。虽然视听目标说话人提取在模拟数据上比单模态方法提供了更稳定的性能,但其对现实情况的适应性以及对真实记录混合的评价尚未得到充分的探讨。处理现实情况的主要问题之一是如何使系统对线索腐败具有鲁棒性,因为在真实记录中,两个线索可能不一样可靠,例如视觉线索可能受到遮挡的影响。在这项工作中,我们提出了一种新的多模态融合注意机制及其训练方法,能够有效地捕获线索的可靠性,并对更可靠的线索进行加权。与传统的模拟数据融合机制相比,我们的方案将信号失真比(SDR)提高了1.0 dB。此外,我们还记录了一个具有真实视觉线索损坏的同步语音视听数据集,并证明了我们的建议在真实数据上成功地提取了视听目标说话人。
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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