VITON-DRR: Details Retention Virtual Try-on via Non-rigid Registration
Journal:
arXiv
Published Date:
May 29, 2025
Abstract
Image-based virtual try-on aims to fit a target garment to a specific person
image and has attracted extensive research attention because of its huge
application potential in the e-commerce and fashion industries. To generate
high-quality try-on results, accurately warping the clothing item to fit the
human body plays a significant role, as slight misalignment may lead to
unrealistic artifacts in the fitting image. Most existing methods warp the
clothing by feature matching and thin-plate spline (TPS). However, it often
fails to preserve clothing details due to self-occlusion, severe misalignment
between poses, etc. To address these challenges, this paper proposes a detail
retention virtual try-on method via accurate non-rigid registration (VITON-DRR)
for diverse human poses. Specifically, we reconstruct a human semantic
segmentation using a dual-pyramid-structured feature extractor. Then, a novel
Deformation Module is designed for extracting the cloth key points and warping
them through an accurate non-rigid registration algorithm. Finally, the Image
Synthesis Module is designed to synthesize the deformed garment image and
generate the human pose information adaptively. {Compared with} traditional
methods, the proposed VITON-DRR can make the deformation of fitting images more
accurate and retain more garment details. The experimental results demonstrate
that the proposed method performs better than state-of-the-art methods.