Unsupervised Grounding of Plannable First-Order Logic Representation from Images

February 21, 2019 Β· Declared Dead Β· πŸ› International Conference on Automated Planning and Scheduling

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Authors Masataro Asai arXiv ID 1902.08093 Category cs.AI: Artificial Intelligence Cross-listed cs.LG Citations 58 Venue International Conference on Automated Planning and Scheduling Last Checked 4 months ago
Abstract
Recently, there is an increasing interest in obtaining the relational structures of the environment in the Reinforcement Learning community. However, the resulting "relations" are not the discrete, logical predicates compatible to the symbolic reasoning such as classical planning or goal recognition. Meanwhile, Latplan (Asai and Fukunaga 2018) bridged the gap between deep-learning perceptual systems and symbolic classical planners. One key component of the system is a Neural Network called State AutoEncoder (SAE), which encodes an image-based input into a propositional representation compatible to classical planning. To get the best of both worlds, we propose First-Order State AutoEncoder, an unsupervised architecture for grounding the first-order logic predicates and facts. Each predicate models a relationship between objects by taking the interpretable arguments and returning a propositional value. In the experiment using 8-Puzzle and a photo-realistic Blocksworld environment, we show that (1) the resulting predicates capture the interpretable relations (e.g. spatial), (2) they help obtaining the compact, abstract model of the environment, and finally, (3) the resulting model is compatible to symbolic classical planning.
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