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Triple Correlations-Guided Label Supplementation for Unbiased Video Scene Graph Generation

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arxiv 2307.16309 v1 pith:633WTZ2C submitted 2023-07-30 cs.CV

Triple Correlations-Guided Label Supplementation for Unbiased Video Scene Graph Generation

classification cs.CV
keywords missingpredicatesgraphtricovidsggannotationscorrelationsgeneration
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Video-based scene graph generation (VidSGG) is an approach that aims to represent video content in a dynamic graph by identifying visual entities and their relationships. Due to the inherently biased distribution and missing annotations in the training data, current VidSGG methods have been found to perform poorly on less-represented predicates. In this paper, we propose an explicit solution to address this under-explored issue by supplementing missing predicates that should be appear in the ground-truth annotations. Dubbed Trico, our method seeks to supplement the missing predicates by exploring three complementary spatio-temporal correlations. Guided by these correlations, the missing labels can be effectively supplemented thus achieving an unbiased predicate predictions. We validate the effectiveness of Trico on the most widely used VidSGG datasets, i.e., VidVRD and VidOR. Extensive experiments demonstrate the state-of-the-art performance achieved by Trico, particularly on those tail predicates.

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