A Reverse Causal Framework to Mitigate Spurious Correlations for Debiasing Scene Graph Generation
Shuzhou Sun, Li Liu, Tianpeng Liu, Shuaifeng Zhi, Ming-Ming Cheng, Janne Heikkil\"a, Yongxiang Liu

TL;DR
This paper introduces a reverse causal framework for scene graph generation that mitigates spurious correlations and biases by reconstructing the causal structure and employing active estimation and information sampling techniques.
Contribution
It proposes a novel reverse causal structure and methods (ARE and MIS) to reduce biases and improve scene graph generation accuracy.
Findings
Achieves state-of-the-art mean recall rate on benchmarks.
Effectively reduces tail and foreground-background biases.
Demonstrates theoretical mitigation of spurious correlations.
Abstract
Existing two-stage Scene Graph Generation (SGG) frameworks typically incorporate a detector to extract relationship features and a classifier to categorize these relationships; therefore, the training paradigm follows a causal chain structure, where the detector's inputs determine the classifier's inputs, which in turn influence the final predictions. However, such a causal chain structure can yield spurious correlations between the detector's inputs and the final predictions, i.e., the prediction of a certain relationship may be influenced by other relationships. This influence can induce at least two observable biases: tail relationships are predicted as head ones, and foreground relationships are predicted as background ones; notably, the latter bias is seldom discussed in the literature. To address this issue, we propose reconstructing the causal chain structure into a reverse…
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