GarmentZoom trains one model to synthesize unaligned close-up details into full-view garment images across continuous scales 3-20x without per-instance tuning.
TextureGAN: Controlling Deep Image Synthesis with Texture Patches
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
In this paper, we investigate deep image synthesis guided by sketch, color, and texture. Previous image synthesis methods can be controlled by sketch and color strokes but we are the first to examine texture control. We allow a user to place a texture patch on a sketch at arbitrary locations and scales to control the desired output texture. Our generative network learns to synthesize objects consistent with these texture suggestions. To achieve this, we develop a local texture loss in addition to adversarial and content loss to train the generative network. We conduct experiments using sketches generated from real images and textures sampled from a separate texture database and results show that our proposed algorithm is able to generate plausible images that are faithful to user controls. Ablation studies show that our proposed pipeline can generate more realistic images than adapting existing methods directly.
fields
cs.CV 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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GarmentZoom: Generating Zoomable Images from Garment Listings
GarmentZoom trains one model to synthesize unaligned close-up details into full-view garment images across continuous scales 3-20x without per-instance tuning.