IntPhys: A Framework and Benchmark for Visual Intuitive Physics Reasoning

March 20, 2018 Β· Declared Dead Β· πŸ› IEEE Transactions on Pattern Analysis and Machine Intelligence

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Authors Ronan Riochet, Mario Ynocente Castro, Mathieu Bernard, Adam Lerer, Rob Fergus, VΓ©ronique Izard, Emmanuel Dupoux arXiv ID 1803.07616 Category cs.AI: Artificial Intelligence Cross-listed cs.CV Citations 84 Venue IEEE Transactions on Pattern Analysis and Machine Intelligence Last Checked 3 months ago
Abstract
In order to reach human performance on complexvisual tasks, artificial systems need to incorporate a sig-nificant amount of understanding of the world in termsof macroscopic objects, movements, forces, etc. Inspiredby work on intuitive physics in infants, we propose anevaluation benchmark which diagnoses how much a givensystem understands about physics by testing whether itcan tell apart well matched videos of possible versusimpossible events constructed with a game engine. Thetest requires systems to compute a physical plausibilityscore over an entire video. It is free of bias and cantest a range of basic physical reasoning concepts. Wethen describe two Deep Neural Networks systems aimedat learning intuitive physics in an unsupervised way,using only physically possible videos. The systems aretrained with a future semantic mask prediction objectiveand tested on the possible versus impossible discrimi-nation task. The analysis of their results compared tohuman data gives novel insights in the potentials andlimitations of next frame prediction architectures.
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