Learning Visual Question Answering by Bootstrapping Hard Attention
August 01, 2018 Β· Declared Dead Β· π European Conference on Computer Vision
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Authors
Mateusz Malinowski, Carl Doersch, Adam Santoro, Peter Battaglia
arXiv ID
1808.00300
Category
cs.CV: Computer Vision
Cross-listed
cs.AI,
cs.CL,
cs.LG,
cs.NE
Citations
99
Venue
European Conference on Computer Vision
Last Checked
4 months ago
Abstract
Attention mechanisms in biological perception are thought to select subsets of perceptual information for more sophisticated processing which would be prohibitive to perform on all sensory inputs. In computer vision, however, there has been relatively little exploration of hard attention, where some information is selectively ignored, in spite of the success of soft attention, where information is re-weighted and aggregated, but never filtered out. Here, we introduce a new approach for hard attention and find it achieves very competitive performance on a recently-released visual question answering datasets, equalling and in some cases surpassing similar soft attention architectures while entirely ignoring some features. Even though the hard attention mechanism is thought to be non-differentiable, we found that the feature magnitudes correlate with semantic relevance, and provide a useful signal for our mechanism's attentional selection criterion. Because hard attention selects important features of the input information, it can also be more efficient than analogous soft attention mechanisms. This is especially important for recent approaches that use non-local pairwise operations, whereby computational and memory costs are quadratic in the size of the set of features.
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