Department of Brain and Cognitive Sciences, Massachusetts Institute of Technology, Cambridge, MA 02139.
Proc Natl Acad Sci U S A. 2013 Nov 5;110(45):18327-32. doi: 10.1073/pnas.1306572110. Epub 2013 Oct 21.
In a glance, we can perceive whether a stack of dishes will topple, a branch will support a child's weight, a grocery bag is poorly packed and liable to tear or crush its contents, or a tool is firmly attached to a table or free to be lifted. Such rapid physical inferences are central to how people interact with the world and with each other, yet their computational underpinnings are poorly understood. We propose a model based on an "intuitive physics engine," a cognitive mechanism similar to computer engines that simulate rich physics in video games and graphics, but that uses approximate, probabilistic simulations to make robust and fast inferences in complex natural scenes where crucial information is unobserved. This single model fits data from five distinct psychophysical tasks, captures several illusions and biases, and explains core aspects of human mental models and common-sense reasoning that are instrumental to how humans understand their everyday world.
我们一眼就能看出一堆盘子是否会倾倒,一根树枝能否承受孩子的重量,一个杂货袋包装是否很差,容易撕裂或压坏里面的东西,或者一个工具是否牢固地固定在桌子上或可以轻易拿起。这些快速的物理推断是人们与世界和彼此互动的核心,但它们的计算基础理解得还很差。我们提出了一个基于“直观物理引擎”的模型,这是一种认知机制,类似于在视频游戏和图形中模拟丰富物理现象的计算机引擎,但它使用近似的概率模拟,在复杂的自然场景中做出稳健和快速的推断,而这些场景中的关键信息是不可观测的。这个单一的模型拟合了来自五个不同心理物理任务的数据,捕捉了几个错觉和偏见,并解释了人类心智模型和常识推理的核心方面,这些对于人类理解他们的日常世界至关重要。