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Learning to Compose Dynamic Tree Structures for Visual Contexts
[article]
2018
arXiv
pre-print
We propose to compose dynamic tree structures that place the objects in an image into a visual context, helping visual reasoning tasks such as scene graph generation and visual Q&A. Our visual context tree model, dubbed VCTree, has two key advantages over existing structured object representations including chains and fully-connected graphs: 1) The efficient and expressive binary tree encodes the inherent parallel/hierarchical relationships among objects, e.g., "clothes" and "pants" are usually
arXiv:1812.01880v1
fatcat:dkg6hgwrtjepdp2tdtn3njkezi