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RawBMamba: End-to-End Bidirectional State Space Model for Audio Deepfake Detection

10 June 2024
Yujie Chen
Jiangyan Yi
Jun Xue
Chenglong Wang
Xiaohui Zhang
Shunbo Dong
Siding Zeng
Jianhua Tao
Lv Zhao
Cunhang Fan
    Mamba
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Abstract

Fake artefacts for discriminating between bonafide and fake audio can exist in both short- and long-range segments. Therefore, combining local and global feature information can effectively discriminate between bonafide and fake audio. This paper proposes an end-to-end bidirectional state space model, named RawBMamba, to capture both short- and long-range discriminative information for audio deepfake detection. Specifically, we use sinc Layer and multiple convolutional layers to capture short-range features, and then design a bidirectional Mamba to address Mamba's unidirectional modelling problem and further capture long-range feature information. Moreover, we develop a bidirectional fusion module to integrate embeddings, enhancing audio context representation and combining short- and long-range information. The results show that our proposed RawBMamba achieves a 34.1\% improvement over Rawformer on ASVspoof2021 LA dataset, and demonstrates competitive performance on other datasets.

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