FiLM: Visual Reasoning with a General Conditioning Layer
Perez, Ethan (MILA, Universite de Montreal, Rice University <span style="font-size: 9.5pt) | Strub, Florian (font-family: Arial, sans) | Vries, Harm de (Univ. Lille, CNRS, Centrale Lille, Inria, UMR 9189 CRIStAL France) | Dumoulin, Vincent (MILA, Universite de Montreal) | Courville, Aaron (MILA, Universite de Montreal)
We introduce a general-purpose conditioning method for neural networks called FiLM: Feature-wise Linear Modulation. FiLM layers influence neural network computation via a simple, feature-wise affine transformation based on conditioning information. We show that FiLM layers are highly effective for visual reasoning - answering image-related questions which require a multi-step, high-level process - a task which has proven difficult for standard deep learning methods that do not explicitly model reasoning. Specifically, we show on visual reasoning tasks that FiLM layers 1) halve state-of-the-art error for the CLEVR benchmark, 2) modulate features in a coherent manner, 3) are robust to ablations and architectural modifications, and 4) generalize well to challenging, new data from few examples or even zero-shot.
Feb-8-2018
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