cs.AI updates on arXiv.org 09月26日
QAMO:基于语音质量的深度伪造检测
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本文提出一种名为QAMO的深度伪造检测方法,通过引入多个质量感知中心点来优化语音质量在单中心点假设下的建模,实现了对语音质量多样性的更好建模,并提高了检测效果。

arXiv:2509.20679v1 Announce Type: cross Abstract: Recent work shows that one-class learning can detect unseen deepfake attacks by modeling a compact distribution of bona fide speech around a single centroid. However, the single-centroid assumption can oversimplify the bona fide speech representation and overlook useful cues, such as speech quality, which reflects the naturalness of the speech. Speech quality can be easily obtained using existing speech quality assessment models that estimate it through Mean Opinion Score. In this paper, we propose QAMO: Quality-Aware Multi-Centroid One-Class Learning for speech deepfake detection. QAMO extends conventional one-class learning by introducing multiple quality-aware centroids. In QAMO, each centroid is optimized to represent a distinct speech quality subspaces, enabling better modeling of intra-class variability in bona fide speech. In addition, QAMO supports a multi-centroid ensemble scoring strategy, which improves decision thresholding and reduces the need for quality labels during inference. With two centroids to represent high- and low-quality speech, our proposed QAMO achieves an equal error rate of 5.09% in In-the-Wild dataset, outperforming previous one-class and quality-aware systems.

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深度伪造检测 语音质量 多中心点学习 单中心点假设
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