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Blind source separation and visual voice activity detection for target speech extraction

机译:目标语音提取的盲源分离和视觉语音活动检测

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Despite being studied extensively, the performance of blind source separation (BSS) is still limited especially for the sensor data collected in adverse environments. Recent studies show that such an issue can be mitigated by incorporating multimodal information into the BSS process. In this paper, we propose a method for the enhancement of the target speech separated by a BSS algorithm from sound mixtures, using visual voice activity detection (VAD) and spectral subtraction. First, a classifier for visual VAD is formed in the off-line training stage, using labelled features extracted from the visual stimuli. Then we use this visual VAD classifier to detect the voice activity of the target speech. Finally we apply a multi-band spectral subtraction algorithm to enhance the BSS-separated speech signal based on the detected voice activity. We have tested our algorithm on the mixtures generated artificially by the mixing filters with different reverberation times, and the results show that our algorithm improves the quality of the separated target signal.
机译:尽管正在广泛研究,但盲源分离(BSS)的性能仍然有限,特别是对于在不利环境中收集的传感器数据。最近的研究表明,可以通过将多式数来的信息纳入BSS过程来减轻这种问题。在本文中,我们用视觉语音活动检测(VAD)和光谱减法,提出了一种通过声音混合物来增强由BSS算法分离的目标语音的方法。首先,使用从视觉刺激提取的标记特征在离线训练阶段中形成用于视觉VAD的分类器。然后我们使用此Visual VAD分类器来检测目标语音的语音活动。最后,我们应用多带谱减法算法,基于检测到的语音活动来增强BSS分离的语音信号。我们在具有不同混响时间的混合滤波器上测试了我们的算法,其混合滤波器具有不同的混响时间,结果表明,我们的算法提高了分离目标信号的质量。

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