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Cross-Modal Audio-Visual Co-Learning for Text-Independent Speaker Verification

Meng Liu, Kong Aik Lee, Longbiao Wang, Hanyi Zhang, Chang Zeng, Jianwu Dang

202316 citationsDOI

Abstract

Visual speech (i.e., lip motion) is highly related to auditory speech due to the co-occurrence and synchronization in speech production. This paper investigates this correlation and proposes a cross-modal speech co-learning paradigm. The primary motivation of our cross-modal co-learning method is modeling one modality aided by exploiting knowledge from another modality. Specifically, two cross-modal boosters are introduced based on an audio-visual pseudo-siamese structure to learn the modality-transformed correlation. Inside each booster, a max-feature-map embedded Transformer variant is proposed for modality alignment and enhanced feature generation. The network is co-learned both from scratch and with pretrained models. Experimental results on the test scenarios demonstrate that our proposed method achieves around 60% and 20% average relative performance improvement over baseline unimodal and fusion systems, respectively.

Topics & Concepts

Computer scienceSpeech recognitionModalModality (human–computer interaction)Artificial intelligenceSynchronization (alternating current)CorrelationFeature (linguistics)TransformerAudio visualPattern recognition (psychology)EngineeringVoltageGeometryPolymer chemistryElectrical engineeringChannel (broadcasting)Computer networkPhilosophyChemistryMultimediaMathematicsLinguisticsSpeech and Audio ProcessingMusic and Audio ProcessingSpeech Recognition and Synthesis
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