Unbiased Scene Graph Generation via Two-stage Causal Modeling
Shuzhou Sun, Shuaifeng Zhi, Qing Liao, Janne Heikkil\"a, Li Liu

TL;DR
This paper introduces a two-stage causal modeling approach to debias scene graph generation, addressing semantic confusion and long-tailed distribution biases to improve unbiased prediction performance.
Contribution
It proposes a novel Two-stage Causal Modeling (TsCM) method that decouples bias interventions, enhancing unbiased scene graph generation across various models.
Findings
Achieves state-of-the-art mean recall rate on benchmarks.
Maintains higher recall for tail relationships compared to existing methods.
Demonstrates effectiveness across multiple SGG backbones.
Abstract
Despite the impressive performance of recent unbiased Scene Graph Generation (SGG) methods, the current debiasing literature mainly focuses on the long-tailed distribution problem, whereas it overlooks another source of bias, i.e., semantic confusion, which makes the SGG model prone to yield false predictions for similar relationships. In this paper, we explore a debiasing procedure for the SGG task leveraging causal inference. Our central insight is that the Sparse Mechanism Shift (SMS) in causality allows independent intervention on multiple biases, thereby potentially preserving head category performance while pursuing the prediction of high-informative tail relationships. However, the noisy datasets lead to unobserved confounders for the SGG task, and thus the constructed causal models are always causal-insufficient to benefit from SMS. To remedy this, we propose Two-stage Causal…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Topic Modeling · Domain Adaptation and Few-Shot Learning
