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Unraveling Instance Associations: A Closer Look for Audio-Visual Segmentation

About

Audio-visual segmentation (AVS) is a challenging task that involves accurately segmenting sounding objects based on audio-visual cues. The effectiveness of audio-visual learning critically depends on achieving accurate cross-modal alignment between sound and visual objects. Successful audio-visual learning requires two essential components: 1) a challenging dataset with high-quality pixel-level multi-class annotated images associated with audio files, and 2) a model that can establish strong links between audio information and its corresponding visual object. However, these requirements are only partially addressed by current methods, with training sets containing biased audio-visual data, and models that generalise poorly beyond this biased training set. In this work, we propose a new cost-effective strategy to build challenging and relatively unbiased high-quality audio-visual segmentation benchmarks. We also propose a new informative sample mining method for audio-visual supervised contrastive learning to leverage discriminative contrastive samples to enforce cross-modal understanding. We show empirical results that demonstrate the effectiveness of our benchmark. Furthermore, experiments conducted on existing AVS datasets and on our new benchmark show that our method achieves state-of-the-art (SOTA) segmentation accuracy.

Yuanhong Chen, Yuyuan Liu, Hu Wang, Fengbei Liu, Chong Wang, Helen Frazer, Gustavo Carneiro• 2023

Related benchmarks

TaskDatasetResultRank
Audio-Visual SegmentationAVSBench S4 v1 (test)
MJ78.8
55
Audio-Visual SegmentationAVSBench MS3 v1 (test)
Mean Jaccard55.8
37
Audio-Visual Semantic SegmentationAVSBench AVSS v1 (test)
MJ30.4
29
Audio-Visual SegmentationAVSBench AVS-Objects-S4
J&F Score83.8
21
Audio-Visual SegmentationAVSBench AVS-Objects-MS3
J & F Score61.5
21
Audio-Visual SegmentationAVS-Object S4
J&Fm90.5
19
Audio-Visual SegmentationAVS-Object MS3
J&Fm Combined Score72.7
19
Audio-Visual SegmentationVPO-SS 1.0 (test)
J & FB Score67.02
16
Audio-Visual SegmentationAVSBench AVS-Semantic
J (Jaccard)30.4
13
Audio-Visual SegmentationAVS-Semantic
Jaccard Index (J)48.6
12
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