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Robust Generative Audio Quality Assessment: Disentangling Quality from Spurious Correlations

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The rapid proliferation of AI-Generated Content (AIGC) has necessitated robust metrics for perceptual quality assessment. However, automatic Mean Opinion Score (MOS) prediction models are often compromised by data scarcity, predisposing them to learn spurious correlations-- such as dataset-specific acoustic signatures-- rather than generalized quality features. To address this, we leverage domain adversarial training (DAT) to disentangle true quality perception from these nuisance factors. Unlike prior works that rely on static domain priors, we systematically investigate domain definition strategies ranging from explicit metadata-driven labels to implicit data-driven clusters. Our findings reveal that there is no "one-size-fits-all" domain definition; instead, the optimal strategy is highly dependent on the specific MOS aspect being evaluated. Experimental results demonstrate that our aspect-specific domain strategy effectively mitigates acoustic biases, significantly improving correlation with human ratings and achieving superior generalization on unseen generative scenarios.

Kuan-Tang Huang, Chien-Chun Wang, Cheng-Yeh Yang, Hung-Shin Lee, Hsin-Min Wang, Berlin Chen• 2026

Related benchmarks

TaskDatasetResultRank
Audio Content Enjoyment (CE) AssessmentAES-Natural
SRCC0.967
9
Audio Content Usefulness (CU) AssessmentAES-Natural
SRCC0.963
9
Audio Production Complexity (PC) AssessmentAES-Natural
SRCC0.969
9
Audio Production Quality (PQ) AssessmentAES-Natural
SRCC0.953
9
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