Method for estimating real-scale 3D human body shape from an image based on 3D camera calibration and computer graphics-based reverse projection photogrammetry.

IF 1.8
Daisuke Imoto, Masakatsu Honma, Masato Asano, Wataru Sakurai, Kenji Kurosawa
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Abstract

The combination of computer vision (CV) and computer graphics (CG) is being developed for use in many fields. Consequently, reverse projection photogrammetry, which identifies geometric properties of a subject based on accurate reproduction of the image content, is beginning to replace analysis combining CV and CG. Since an image captured by a camera has two-dimensional (2D) geometry, estimating real-scale three dimensional (3D) information about a human or object from a low-resolution security camera image is a challenge and has not been achieved without prior knowledge of the person or object. However, deep learning technology that applies fitting a 3D human body shape model to a human image has been developed, but it is difficult to scale the reconstructed model to the actual scale with only a 2D image as an input. In this study, we propose a novel method to estimate a real-scale 3D human body shape model (SMPL-X model) from a human image via a combination of 3D camera calibration and CG-based reverse projection photogrammetry. The method estimates the position, orientation, posture, and body shape of a 3D human body shape model of a human image in a non-straight posture, which is difficult to analyze conventionally. The method was also used to estimate height and weight based on the estimated 3D human body shape, greatly expanding the range of analysis of height and weight estimation. The equal error rate from a few hundred to a few thousand comparisons was evaluated toward realizing person verification.

基于三维摄像机标定和基于计算机图形学的反向投影摄影测量的图像实景三维人体形状估计方法。
计算机视觉(CV)和计算机图形学(CG)的结合正在被开发用于许多领域。因此,基于精确再现图像内容来识别物体几何属性的反向投影摄影测量,正开始取代CV和CG相结合的分析。由于摄像机捕获的图像具有二维(2D)几何形状,因此从低分辨率安全摄像机图像中估计有关人或物体的真实三维(3D)信息是一项挑战,并且在没有事先了解人或物体的情况下无法实现。然而,目前已经开发出将三维人体形状模型拟合到人体图像上的深度学习技术,但仅以二维图像作为输入,很难将重建的模型按比例缩放到实际比例。在这项研究中,我们提出了一种新的方法,通过三维相机校准和基于cg的反向投影摄影测量相结合,从人体图像中估计出真实的三维人体形状模型(SMPL-X模型)。该方法对非直姿人体图像的三维人体形状模型的位置、方向、姿态和体型进行估计,这是传统方法难以分析的问题。该方法还可用于基于三维人体形状估算身高和体重,大大扩展了身高和体重估算的分析范围。为实现人员验证,评估了从几百到几千的相同错误率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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