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arxiv: 2505.10885 · v1 · pith:DMJ6JMN5new · submitted 2025-05-16 · 💻 cs.SD · cs.AI· cs.MM· eess.AS

BanglaFake: Constructing and Evaluating a Specialized Bengali Deepfake Audio Dataset

classification 💻 cs.SD cs.AIcs.MMeess.AS
keywords deepfakebengalidatasetaudiodetectionlow-resourcenaturalnessreal
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Deepfake audio detection is challenging for low-resource languages like Bengali due to limited datasets and subtle acoustic features. To address this, we introduce BangalFake, a Bengali Deepfake Audio Dataset with 12,260 real and 13,260 deepfake utterances. Synthetic speech is generated using SOTA Text-to-Speech (TTS) models, ensuring high naturalness and quality. We evaluate the dataset through both qualitative and quantitative analyses. Mean Opinion Score (MOS) from 30 native speakers shows Robust-MOS of 3.40 (naturalness) and 4.01 (intelligibility). t-SNE visualization of MFCCs highlights real vs. fake differentiation challenges. This dataset serves as a crucial resource for advancing deepfake detection in Bengali, addressing the limitations of low-resource language research.

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