单目人体形状估计:一种辅助生成方法

Lanfeng Zhou, Xiao-Shan Ji, Ling Li
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引用次数: 0

摘要

从单目图像中观察人类是计算机视觉的基本任务之一。单眼图像人体重建主要包括姿态和体型的重建。然而,在过去的研究中,研究人员对姿态估计更感兴趣,忽视了对身体形状的研究,本文主要研究三维模型的身体形状估计。通过实例分割学习主体参数需要大量的标签。而基于姿态估计的参数完全是基于关键点检测的结果,对于角度差、分辨率低的图片效果不佳。针对上述问题,我们提出了一种自动生成数据集的方法。该数据集提供了各种角度和模糊形状的低分辨率图像和标签。在生成的低分辨率和角度较差的数据集上,我们提出了一个生成辅助深度学习网络框架。实验表明,该框架能有效地从单眼图像中估计出模型的体型参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monocular Human Body Shape Estimation: A Generation-aid Approach
Observing human beings from monocular images is one of the basic tasks of computer vision. Reconstructing human bodies from monocular images mainly includes the reconstruction of posture and body shape. However, in the past studies, researchers were more interested in pose estimation, ignoring the study of body shape, and this paper focuses on the estimation of the body shape of a 3D model. Learning body parameters via instance segmentation requires a large number of labels. While the parameters based on pose estimation are completely based on the results of key points detection, which effect is not friendly for pictures with poor angles and low resolution. In response to the above problems, we propose a method to automatically generate datasets. The dataset provides low-resolution images and labels of various angles and blurred shapes. On the generated low-resolution and poorly angled dataset, we propose a generative-assisted deep learning network framework. Experiments show that the framework can effectively estimate the body shape parameters of the model from monocular images.
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