论文标题
一项关于建模直观物理的机器学习方法的调查
A Survey on Machine Learning Approaches for Modelling Intuitive Physics
论文作者
论文摘要
认知科学的研究为从嘈杂的感知输入对物体进行物理推理时提供了广泛的人类认知能力的证据。这种认知能力通常被称为直观物理。随着深度学习的进步,人们对构建能够从给定场景进行物理推理的智能系统越来越兴趣,以构建更好的AI系统。结果,在建模机器认知的直观物理学中的许多当代方法都受到认知科学的文献的启发。尽管在机器认知的物理推理方面进行了广泛的工作,但仍有稀缺的评论来组织和分组这些深度学习方法。特别是在直觉物理和人工智能的交集中,需要了解各种思想和方法。因此,本文对直观物理启发的物理推理的深度学习方法进行了全面的调查。该调查将首先将现有的深度学习方法归类为物理推理的三个方面,然后将其组织为三种一般的技术方法,并提出该领域的六个类别任务。最后,我们强调了当前领域的挑战,并提出了一些未来的研究方向。
Research in cognitive science has provided extensive evidence of human cognitive ability in performing physical reasoning of objects from noisy perceptual inputs. Such a cognitive ability is commonly known as intuitive physics. With advancements in deep learning, there is an increasing interest in building intelligent systems that are capable of performing physical reasoning from a given scene for the purpose of building better AI systems. As a result, many contemporary approaches in modelling intuitive physics for machine cognition have been inspired by literature from cognitive science. Despite the wide range of work in physical reasoning for machine cognition, there is a scarcity of reviews that organize and group these deep learning approaches. Especially at the intersection of intuitive physics and artificial intelligence, there is a need to make sense of the diverse range of ideas and approaches. Therefore, this paper presents a comprehensive survey of recent advances and techniques in intuitive physics-inspired deep learning approaches for physical reasoning. The survey will first categorize existing deep learning approaches into three facets of physical reasoning before organizing them into three general technical approaches and propose six categorical tasks of the field. Finally, we highlight the challenges of the current field and present some future research directions.