体型
人体
计算机科学
计算机视觉
人工智能
构造(python库)
人体模型
参数统计
过程(计算)
姿势
几何本原
服装
运动捕捉
计算机图形学(图像)
数学
地理
运动(物理)
统计
考古
程序设计语言
操作系统
作者
Dan Song,Ruofeng Tong,Jian Chang,Xiaosong Yang,Min Tang,Jianjun Zhang
摘要
Abstract Estimation of 3D body shapes from dressed‐human photos is an important but challenging problem in virtual fitting. We propose a novel automatic framework to efficiently estimate 3D body shapes under clothes. We construct a database of 3D naked and dressed body pairs, based on which we learn how to predict 3D positions of body landmarks (which further constrain a parametric human body model) automatically according to dressed‐human silhouettes. Critical vertices are selected on 3D registered human bodies as landmarks to represent body shapes, so as to avoid the time‐consuming vertices correspondences finding process for parametric body reconstruction. Our method can estimate 3D body shapes from dressed‐human silhouettes within 4 seconds, while the fastest method reported previously need 1 minute. In addition, our estimation error is within the size tolerance for clothing industry. We dress 6042 naked bodies with 3 sets of common clothes by physically based cloth simulation technique. To the best of our knowledge, We are the first to construct such a database containing 3D naked and dressed body pairs and our database may contribute to the areas of human body shapes estimation and cloth simulation.
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