Learning to Infer Graphics Programs from Hand-Drawn Images
Ellis, Kevin, Ritchie, Daniel, Solar-Lezama, Armando, Tenenbaum, Josh
–Neural Information Processing Systems
We introduce a model that learns to convert simple hand drawings into graphics programs written in a subset of \LaTeX.~The model combines techniques from deep learning and program synthesis. We learn a convolutional neural network that proposes plausible drawing primitives that explain an image. These drawing primitives are a specification (spec) of what the graphics program needs to draw. We learn a model that uses program synthesis techniques to recover a graphics program from that spec. These programs have constructs like variable bindings, iterative loops, or simple kinds of conditionals. With a graphics program in hand, we can correct errors made by the deep network and extrapolate drawings.
Neural Information Processing Systems
Dec-31-2018
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