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Main Authors: Wang, Yuxuan, Liu, Xiaoyuan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2403.16184
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author Wang, Yuxuan
Liu, Xiaoyuan
author_facet Wang, Yuxuan
Liu, Xiaoyuan
contents Scene Graph Generation (SGG) provides basic language representation of visual scenes, requiring models to grasp complex and diverse semantics between objects. This complexity and diversity in SGG leads to underrepresentation, where parts of triplet labels are rare or even unseen during training, resulting in imprecise predictions. To tackle this, we propose integrating the pretrained Vision-language Models to enhance representation. However, due to the gap between pretraining and SGG, direct inference of pretrained VLMs on SGG leads to severe bias, which stems from the imbalanced predicates distribution in the pretraining language set. To alleviate the bias, we introduce a novel LM Estimation to approximate the unattainable predicates distribution. Finally, we ensemble the debiased VLMs with SGG models to enhance the representation, where we design a certainty-aware indicator to score each sample and dynamically adjust the ensemble weights. Our training-free method effectively addresses the predicates bias in pretrained VLMs, enhances SGG's representation, and significantly improve the performance.
format Preprint
id arxiv_https___arxiv_org_abs_2403_16184
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Predicate Debiasing in Vision-Language Models Integration for Scene Graph Generation Enhancement
Wang, Yuxuan
Liu, Xiaoyuan
Computer Vision and Pattern Recognition
Scene Graph Generation (SGG) provides basic language representation of visual scenes, requiring models to grasp complex and diverse semantics between objects. This complexity and diversity in SGG leads to underrepresentation, where parts of triplet labels are rare or even unseen during training, resulting in imprecise predictions. To tackle this, we propose integrating the pretrained Vision-language Models to enhance representation. However, due to the gap between pretraining and SGG, direct inference of pretrained VLMs on SGG leads to severe bias, which stems from the imbalanced predicates distribution in the pretraining language set. To alleviate the bias, we introduce a novel LM Estimation to approximate the unattainable predicates distribution. Finally, we ensemble the debiased VLMs with SGG models to enhance the representation, where we design a certainty-aware indicator to score each sample and dynamically adjust the ensemble weights. Our training-free method effectively addresses the predicates bias in pretrained VLMs, enhances SGG's representation, and significantly improve the performance.
title Predicate Debiasing in Vision-Language Models Integration for Scene Graph Generation Enhancement
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2403.16184