A Causal Adjustment Module for Debiasing Scene Graph Generation

Li Liu;Shuzhou Sun;Shuaifeng Zhi;Fan Shi;Zhen Liu;Janne Heikkilä;Yongxiang Liu
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Abstract

While recent debiasing methods for Scene Graph Generation (SGG) have shown impressive performance, these efforts often attribute model bias solely to the long-tail distribution of relationships, overlooking the more profound causes stemming from skewed object and object pair distributions. In this paper, we employ causal inference techniques to model the causality among these observed skewed distributions. Our insight lies in the ability of causal inference to capture the unobservable causal effects between complex distributions, which is crucial for tracing the roots of model bias. Specifically, we introduce the Mediator-based Causal Chain Model (MCCM), which, in addition to modeling causality among objects, object pairs, and relationships, incorporates mediator variables, i.e., cooccurrence distribution, for complementing the causality. Following this, we propose the Causal Adjustment Module (CAModule) to estimate the modeled causal structure, using variables from MCCM as inputs to produce a set of adjustment factors aimed at correcting biased model predictions. Moreover, our method enables the composition of zero-shot relationships, thereby enhancing the model’s ability to recognize such relationships. Experiments conducted across various SGG backbones and popular benchmarks demonstrate that CAModule achieves state-of-the-art mean recall rates, with significant improvements also observed on the challenging zero-shot recall rate metric.
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一种用于场景图生成去偏的因果调整模块
虽然最近场景图生成(SGG)的去偏方法已经显示出令人印象深刻的性能,但这些努力通常将模型偏差仅仅归因于关系的长尾分布,而忽略了由倾斜的对象和对象对分布引起的更深刻的原因。在本文中,我们采用因果推理技术来模拟这些观察到的偏态分布之间的因果关系。我们的洞察力在于因果推理能够捕捉复杂分布之间不可观察的因果效应,这对于追踪模型偏差的根源至关重要。具体来说,我们引入了基于中介的因果链模型(mcm),该模型除了建模对象、对象对和关系之间的因果关系外,还包含中介变量,即共发生分布,以补充因果关系。在此之后,我们提出了因果调整模块(CAModule)来估计建模的因果结构,使用MCCM中的变量作为输入来产生一组调整因子,旨在纠正有偏差的模型预测。此外,我们的方法允许零-镜头关系的组合,从而增强了模型识别这种关系的能力。在各种SGG骨干网和流行的基准测试中进行的实验表明,CAModule达到了最先进的平均召回率,在具有挑战性的零射击召回率指标上也观察到显著的改进。
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