Image-Based Virtual Try-on System With Clothing-Size Adjustment
- URL: http://arxiv.org/abs/2302.14197v1
- Date: Mon, 27 Feb 2023 23:28:17 GMT
- Title: Image-Based Virtual Try-on System With Clothing-Size Adjustment
- Authors: Minoru Kuribayashi, Koki Nakai, Nobuo Funabiki
- Abstract summary: The conventional image-based virtual try-on method cannot generate fitting images that correspond to the clothing size.
In this study, an image-based virtual try-on system that could adjust the clothing size was proposed.
- Score: 5.006086647446481
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The conventional image-based virtual try-on method cannot generate fitting
images that correspond to the clothing size because the system cannot
accurately reflect the body information of a person. In this study, an
image-based virtual try-on system that could adjust the clothing size was
proposed. The size information of the person and clothing were used as the
input for the proposed method to visualize the fitting of various clothing
sizes in a virtual space. First, the distance between the shoulder width and
height of the clothing in the person image is calculated based on the
coordinate information of the key points detected by OpenPose. Then, the system
changes the size of only the clothing area of the segmentation map, whose
layout is estimated using the size of the person measured in the person image
based on the ratio of the person and clothing sizes. If the size of the
clothing area increases during the drawing, the details in the collar and
overlapping areas are corrected to improve visual appearance.
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