CVAug 30, 2021

From General to Specific: Informative Scene Graph Generation via Balance Adjustment

arXiv:2108.13129v196 citations
Originality Incremental advance
AI Analysis

This addresses a specific imbalance issue in scene graph generation for computer vision, improving model performance in generating more informative relationships.

The paper tackles the problem of scene graph generation models favoring common predicates over informative ones, which leads to loss of precise information, by proposing BA-SGG, a framework that adjusts semantic and training imbalances, resulting in 14.3%, 8.0%, and 6.1% higher Mean Recall than a Transformer model on Visual Genome sub-tasks.

The scene graph generation (SGG) task aims to detect visual relationship triplets, i.e., subject, predicate, object, in an image, providing a structural vision layout for scene understanding. However, current models are stuck in common predicates, e.g., "on" and "at", rather than informative ones, e.g., "standing on" and "looking at", resulting in the loss of precise information and overall performance. If a model only uses "stone on road" rather than "blocking" to describe an image, it is easy to misunderstand the scene. We argue that this phenomenon is caused by two key imbalances between informative predicates and common ones, i.e., semantic space level imbalance and training sample level imbalance. To tackle this problem, we propose BA-SGG, a simple yet effective SGG framework based on balance adjustment but not the conventional distribution fitting. It integrates two components: Semantic Adjustment (SA) and Balanced Predicate Learning (BPL), respectively for adjusting these imbalances. Benefited from the model-agnostic process, our method is easily applied to the state-of-the-art SGG models and significantly improves the SGG performance. Our method achieves 14.3%, 8.0%, and 6.1% higher Mean Recall (mR) than that of the Transformer model at three scene graph generation sub-tasks on Visual Genome, respectively. Codes are publicly available.

Code Implementations1 repo
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