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Main Authors: Toozandehjani, Maliheh, Mousavi, Ali, Taheri, Reza
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.03807
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author Toozandehjani, Maliheh
Mousavi, Ali
Taheri, Reza
author_facet Toozandehjani, Maliheh
Mousavi, Ali
Taheri, Reza
contents The aim of image-based virtual try-on is to generate realistic images of individuals wearing target garments, ensuring that the pose, body shape and characteristics of the target garment are accurately preserved. Existing methods often fail to reproduce the fine details of target garments effectively and lack generalizability to new scenarios. In the proposed method, the person's initial garment is completely removed. Subsequently, a precise warping is performed using the predicted keypoints to fully align the target garment with the body structure and pose of the individual. Based on the warped garment, a body segmentation map is more accurately predicted. Then, using an alignment-aware segment normalization, the misaligned areas between the warped garment and the predicted garment region in the segmentation map are removed. Finally, the generator produces the final image with high visual quality, reconstructing the precise characteristics of the target garment, including its overall shape and texture. This approach emphasizes preserving garment characteristics and improving adaptability to various poses, providing better generalization for diverse applications.
format Preprint
id arxiv_https___arxiv_org_abs_2504_03807
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle From Keypoints to Realism: A Realistic and Accurate Virtual Try-on Network from 2D Images
Toozandehjani, Maliheh
Mousavi, Ali
Taheri, Reza
Computer Vision and Pattern Recognition
The aim of image-based virtual try-on is to generate realistic images of individuals wearing target garments, ensuring that the pose, body shape and characteristics of the target garment are accurately preserved. Existing methods often fail to reproduce the fine details of target garments effectively and lack generalizability to new scenarios. In the proposed method, the person's initial garment is completely removed. Subsequently, a precise warping is performed using the predicted keypoints to fully align the target garment with the body structure and pose of the individual. Based on the warped garment, a body segmentation map is more accurately predicted. Then, using an alignment-aware segment normalization, the misaligned areas between the warped garment and the predicted garment region in the segmentation map are removed. Finally, the generator produces the final image with high visual quality, reconstructing the precise characteristics of the target garment, including its overall shape and texture. This approach emphasizes preserving garment characteristics and improving adaptability to various poses, providing better generalization for diverse applications.
title From Keypoints to Realism: A Realistic and Accurate Virtual Try-on Network from 2D Images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2504.03807