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SAM Audio Judge: A Unified Multimodal Framework for Perceptual Evaluation of Audio Separation

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The performance evaluation remains a complex challenge in audio separation, and existing evaluation metrics are often misaligned with human perception, course-grained, relying on ground truth signals. On the other hand, subjective listening tests remain the gold standard for real-world evaluation, but they are expensive, time-consuming, and difficult to scale. This paper addresses the growing need for automated systems capable of evaluating audio separation without human intervention. The proposed evaluation metric, SAM Audio Judge (SAJ), is a multimodal fine-grained reference-free objective metric, which shows highly alignment with human perceptions. SAJ supports three audio domains (speech, music and general sound events) and three prompt inputs (text, visual and span), covering four different dimensions of evaluation (recall, percision, faithfulness, and overall). SAM Audio Judge also shows potential applications in data filtering, pseudo-labeling large datasets and reranking in audio separation models. We release our code and pre-trained models at: https://github.com/facebookresearch/sam-audio.

Helin Wang, Bowen Shi, Andros Tjandra, John Hoffman, Yi-Chiao Wu, Apoorv Vyas, Najim Dehak, Ann Lee, Wei-Ning Hsu• 2026

Related benchmarks

TaskDatasetResultRank
Audio separation quality assessmentSAM Audio-Bench Speech
PCC Overall0.724
9
Audio separation quality assessmentSAM Audio-Bench Music
PCC Overall0.721
9
Audio separation quality assessmentSAM Audio-Bench Sound
PCC Overall0.56
9
Audio Quality AssessmentSpeech
PCC Overall0.883
5
Audio Quality Assessmentmusic
PCC Overall0.815
5
Audio Quality AssessmentSound
PCC Overall0.815
5
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