Learning Hierarchical Semantic Image Manipulation through Structured Representations
August 22, 2018 Β· Declared Dead Β· π Neural Information Processing Systems
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Authors
Seunghoon Hong, Xinchen Yan, Thomas Huang, Honglak Lee
arXiv ID
1808.07535
Category
cs.CV: Computer Vision
Citations
87
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
Understanding, reasoning, and manipulating semantic concepts of images have been a fundamental research problem for decades. Previous work mainly focused on direct manipulation on natural image manifold through color strokes, key-points, textures, and holes-to-fill. In this work, we present a novel hierarchical framework for semantic image manipulation. Key to our hierarchical framework is that we employ a structured semantic layout as our intermediate representation for manipulation. Initialized with coarse-level bounding boxes, our structure generator first creates pixel-wise semantic layout capturing the object shape, object-object interactions, and object-scene relations. Then our image generator fills in the pixel-level textures guided by the semantic layout. Such framework allows a user to manipulate images at object-level by adding, removing, and moving one bounding box at a time. Experimental evaluations demonstrate the advantages of the hierarchical manipulation framework over existing image generation and context hole-filing models, both qualitatively and quantitatively. Benefits of the hierarchical framework are further demonstrated in applications such as semantic object manipulation, interactive image editing, and data-driven image manipulation.
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