Statistical machine learning algorithms have achieved state-of-the-art results on benchmark datasets, outperforming humans in many tasks. However, the out-of-distribution data and confounder, which have an unpredictable causal relationship, significantly degrade the performance of the existing models. Causal Representation Learning (CRL) has recently been a promising direction to address the causal relationship problem in vision understanding. This survey presents recent advances in CRL in vision. Firstly, we introduce the basic concept of causal inference. Secondly, we analyze the CRL theoretical work, especially in invariant risk minimization, and the practical work in feature understanding and transfer learning. Finally, we propose a future research direction in medical image analysis and CRL general theory.
翻译:统计机器学习算法在基准数据集方面取得了最先进的结果,在很多任务中比人类表现优异。然而,分配外数据和混乱者有着不可预测的因果关系,大大降低了现有模型的绩效。causal Presentation Learning(CRL)最近是解决愿景理解中因果关系问题的有希望的方向。这项调查介绍了CRL在愿景方面的最新进展。首先,我们引入了因果推理的基本概念。第二,我们分析了CRL的理论工作,特别是在尽量减少易变风险方面,以及在特征理解和转移学习方面的实际工作。最后,我们提出了医学图像分析和CRL一般理论的未来研究方向。