CtrlVTON: Controllable Virtual Try-On via Visual-Instance-Prompt Segmentation
Virtual try-on (VTO) has made significant progress in realistically transferring garments onto a target person. Yet most systems give the user little control over how a garment should be worn -- its size (loose or fitted), style (e.g., tucked in or untucked, open or closed), and spatial placement on the body. We address this gap with two complementary contributions. First, we define and solve Visual-Instance-Prompt Segmentation via VIP-SAM: given a flatlay image of a garment, segment that specific instance in a photograph of a person wearing it. This is an instance-level task, distinct from th
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Why these links exist
- Linked via arxiv authorSeungyong Lee →
CtrlVTON: Controllable Virtual Try-On via Visual-Instance-Prompt Segmentation
- Linked via arxiv authorHyun Jun Jang →
CtrlVTON: Controllable Virtual Try-On via Visual-Instance-Prompt Segmentation
- Linked via arxiv authorSangoh Kim →
CtrlVTON: Controllable Virtual Try-On via Visual-Instance-Prompt Segmentation
- Linked via arxiv authorSungjoon Park →
CtrlVTON: Controllable Virtual Try-On via Visual-Instance-Prompt Segmentation
