coarse probabilistic object representation
Modeling Expectation Violation in Intuitive Physics with Coarse Probabilistic Object Representations
From infancy, humans have expectations about how objects will move and interact. Even young children expect objects not to move through one another, teleport, or disappear. They are surprised by mismatches between physical expectations and perceptual observations, even in unfamiliar scenes with completely novel objects. A model that exhibits human-like understanding of physics should be similarly surprised, and adjust its beliefs accordingly. We propose ADEPT, a model that uses a coarse (approximate geometry) object-centric representation for dynamic 3D scene understanding. Inference integrates deep recognition networks, extended probabilistic physical simulation, and particle filtering for forming predictions and expectations across occlusion. We also present a new test set for measuring violations of physical expectations, using a range of scenarios derived from developmental psychology. We systematically compare ADEPT, baseline models, and human expectations on this test set. ADEPT outperforms standard network architectures in discriminating physically implausible scenes, and often performs this discrimination at the same level as people.
Reviews: Modeling Expectation Violation in Intuitive Physics with Coarse Probabilistic Object Representations
Many studies have looked at the ideas of physics simulation as a cognitive model. In such works, physics engines are usually employed as a model of human cognition of physical tasks, with the perception part of the task is often abstracted away. In parallel, data driven model have been frequently used to learn to parse raw visual inputs to detect or locate objects, frequently without using any explicit model of the physical world. This paper tries to bridge these two fields to build a complete model of how humans perceive certain physical scenarios, from raw pixels to expectations over objects. Whereas all of the parts employed in the proposed "pipeline" are based on previous works, their arrangement into this contiguous framework is new, as is the human and modeled results on the new dataset the authors also present.
Modeling Expectation Violation in Intuitive Physics with Coarse Probabilistic Object Representations
From infancy, humans have expectations about how objects will move and interact. Even young children expect objects not to move through one another, teleport, or disappear. They are surprised by mismatches between physical expectations and perceptual observations, even in unfamiliar scenes with completely novel objects. A model that exhibits human-like understanding of physics should be similarly surprised, and adjust its beliefs accordingly. We propose ADEPT, a model that uses a coarse (approximate geometry) object-centric representation for dynamic 3D scene understanding.
Modeling Expectation Violation in Intuitive Physics with Coarse Probabilistic Object Representations
Smith, Kevin, Mei, Lingjie, Yao, Shunyu, Wu, Jiajun, Spelke, Elizabeth, Tenenbaum, Josh, Ullman, Tomer
From infancy, humans have expectations about how objects will move and interact. Even young children expect objects not to move through one another, teleport, or disappear. They are surprised by mismatches between physical expectations and perceptual observations, even in unfamiliar scenes with completely novel objects. A model that exhibits human-like understanding of physics should be similarly surprised, and adjust its beliefs accordingly. We propose ADEPT, a model that uses a coarse (approximate geometry) object-centric representation for dynamic 3D scene understanding.