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Papers/Panoptic Scene Graph Generation with Semantics-Prototype L...

Panoptic Scene Graph Generation with Semantics-Prototype Learning

Li Li, Wei Ji, Yiming Wu, Mengze Li, You Qin, Lina Wei, Roger Zimmermann

2023-07-28Scene Graph GenerationPanoptic Scene Graph GenerationGraph Generation
PaperPDFCode(official)

Abstract

Panoptic Scene Graph Generation (PSG) parses objects and predicts their relationships (predicate) to connect human language and visual scenes. However, different language preferences of annotators and semantic overlaps between predicates lead to biased predicate annotations in the dataset, i.e. different predicates for same object pairs. Biased predicate annotations make PSG models struggle in constructing a clear decision plane among predicates, which greatly hinders the real application of PSG models. To address the intrinsic bias above, we propose a novel framework named ADTrans to adaptively transfer biased predicate annotations to informative and unified ones. To promise consistency and accuracy during the transfer process, we propose to measure the invariance of representations in each predicate class, and learn unbiased prototypes of predicates with different intensities. Meanwhile, we continuously measure the distribution changes between each presentation and its prototype, and constantly screen potential biased data. Finally, with the unbiased predicate-prototype representation embedding space, biased annotations are easily identified. Experiments show that ADTrans significantly improves the performance of benchmark models, achieving a new state-of-the-art performance, and shows great generalization and effectiveness on multiple datasets.

Results

TaskDatasetMetricValueModel
Scene ParsingVisual GenomeRecall@5023ADTrans
Scene ParsingVisual GenomemR@10019.2ADTrans
Scene ParsingVisual GenomemR@5015.8ADTrans
Scene ParsingVisual Genomemean Recall @10019.2ADTrans
Scene ParsingVisual Genomemean Recall @2012.3ADTrans
Scene ParsingPSG DatasetR@2026ADTrans
Scene ParsingPSG DatasetmR@2026.4ADTrans
2D Semantic SegmentationVisual GenomeRecall@5023ADTrans
2D Semantic SegmentationVisual GenomemR@10019.2ADTrans
2D Semantic SegmentationVisual GenomemR@5015.8ADTrans
2D Semantic SegmentationVisual Genomemean Recall @10019.2ADTrans
2D Semantic SegmentationVisual Genomemean Recall @2012.3ADTrans
2D Semantic SegmentationPSG DatasetR@2026ADTrans
2D Semantic SegmentationPSG DatasetmR@2026.4ADTrans
Scene Graph GenerationVisual GenomeRecall@5023ADTrans
Scene Graph GenerationVisual GenomemR@10019.2ADTrans
Scene Graph GenerationVisual GenomemR@5015.8ADTrans
Scene Graph GenerationVisual Genomemean Recall @10019.2ADTrans
Scene Graph GenerationVisual Genomemean Recall @2012.3ADTrans
Scene Graph GenerationPSG DatasetR@2026ADTrans
Scene Graph GenerationPSG DatasetmR@2026.4ADTrans

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