Litcius/Paper detail

Multi-Modal Multi-Channel Target Speech Separation

Rongzhi Gu, Shixiong Zhang, Yong Xu, Lianwu Chen, Yuexian Zou, Dong Yu

2020IEEE Journal of Selected Topics in Signal Processing110 citationsDOIOpen Access PDF

Abstract

Target speech separation refers to extracting a target speaker's voice from an overlapped audio of simultaneous talkers. Previously the use of visual modality for target speech separation has demonstrated great potentials. This work proposes a general multi-modal framework for target speech separation by utilizing all the available information of the target speaker, including his/her spatial location, voice characteristics and lip movements. Also, under this framework, we investigate on the fusion methods for multi-modal joint modeling. A factorized attention-based fusion method is proposed to aggregate the high-level semantic information of multi-modalities at embedding level. This method firstly factorizes the mixture audio into a set of acoustic subspaces, then leverages the target's information from other modalities to enhance these subspace acoustic embeddings with a learnable attention scheme. To validate the robustness of proposed multi-modal separation model in practical scenarios, the system was evaluated under the condition that one of the modalities is temporarily missing, invalid or corrupted. Experiments are conducted on a large-scale audio-visual dataset collected from YouTube (to be released) that spatialized by simulated room impulse responses (RIRs). Experiment results illustrate that our proposed multi-modal framework significantly outperforms single-modal and bi-modal speech separation approaches, while can still support real-time processing.

Topics & Concepts

Computer scienceSpeech recognitionModalRobustness (evolution)Subspace topologyModality (human–computer interaction)EmbeddingSource separationArtificial intelligencePattern recognition (psychology)Polymer chemistryGeneChemistryBiochemistrySpeech and Audio ProcessingMusic and Audio ProcessingAdvanced Adaptive Filtering Techniques
Multi-Modal Multi-Channel Target Speech Separation | Litcius