CVDec 5, 2018

Learning to Compose Dynamic Tree Structures for Visual Contexts

arXiv:1812.01880v1584 citations
Originality Incremental advance
AI Analysis

It addresses visual reasoning tasks for computer vision applications, offering an incremental improvement over existing structured representations.

The paper tackles the problem of visual reasoning by composing dynamic tree structures to represent object relationships in images, resulting in state-of-the-art performance on benchmarks like Visual Genome for scene graph generation and VQA2.0 for visual Q&A.

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 co-occur and belong to "person"; 2) the dynamic structure varies from image to image and task to task, allowing more content-/task-specific message passing among objects. To construct a VCTree, we design a score function that calculates the task-dependent validity between each object pair, and the tree is the binary version of the maximum spanning tree from the score matrix. Then, visual contexts are encoded by bidirectional TreeLSTM and decoded by task-specific models. We develop a hybrid learning procedure which integrates end-task supervised learning and the tree structure reinforcement learning, where the former's evaluation result serves as a self-critic for the latter's structure exploration. Experimental results on two benchmarks, which require reasoning over contexts: Visual Genome for scene graph generation and VQA2.0 for visual Q&A, show that VCTree outperforms state-of-the-art results while discovering interpretable visual context structures.

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