IntPhys: A Framework and Benchmark for Visual Intuitive Physics Reasoning
Riochet, Ronan, Castro, Mario Ynocente, Bernard, Mathieu, Lerer, Adam, Fergus, Rob, Izard, Véronique, Dupoux, Emmanuel
–arXiv.org Artificial Intelligence
In order to reach human performance on complex visual tasks, artificial systems need to incorporate a significant amount of understanding of the world in terms of macroscopic objects, movements, forces, etc. Inspired by work on intuitive physics in infants, we propose an evaluation framework which diagnoses how much a given system understands about physics by testing whether it can tell apart well matched videos of possible versus impossible events. The test requires systems to compute a physical plausibility score over an entire video. It is free of bias and can test a range of specific physical reasoning skills. We then describe the first release of a benchmark dataset aimed at learning intuitive physics in an unsupervised way, using videos constructed with a game engine. We describe two Deep Neural Network baseline systems trained with a future frame prediction objective and tested on the possible versus impossible discrimination task. The analysis of their results compared to human data gives novel insights in the potentials and limitations of next frame prediction architectures.
arXiv.org Artificial Intelligence
Mar-20-2018
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