Many researchers have voiced their support towards Pearl's counterfactual theory of causation as a stepping stone for AI/ML research's ultimate goal of intelligent systems. As in any other growing subfield, patience seems to be a virtue since significant progress on integrating notions from both fields takes time, yet, major challenges such as the lack of ground truth benchmarks or a unified perspective on classical problems such as computer vision seem to hinder the momentum of the research movement. This present work exemplifies how the Pearl Causal Hierarchy (PCH) can be understood on image data by providing insights on several intricacies but also challenges that naturally arise when applying key concepts from Pearlian causality to the study of image data.
翻译:许多研究人员都表示支持珍珠的反事实因果关系理论,认为它是AI/ML研究最终目标智能系统的一个垫脚石。 与任何其他日益增长的子领域一样,耐心似乎是一种优点,因为整合两个领域概念的重大进展需要时间,然而,缺乏地面真相基准或对计算机视觉等传统问题缺乏统一观点等重大挑战似乎阻碍了研究运动的势头。 目前的工作通过提供对若干复杂因素的洞察力,以及将珍珠因果因果等关键概念应用于图像数据研究时自然产生的挑战,说明了如何在图像数据上理解珍珠因果等级(PCH ) 。