Comparing Segmentation Approaches for Learning-Aware Wireframe Generation on Human Model

Jida Huang, Tsz-Ho Kwok
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引用次数: 0

Abstract

Wireframe has been proved very useful for learning human body from semantic parameters. However, the definition of the wireframe is highly dependent on the anthropological experiences of experts in previous works. Hence it is usually not easy to obtain a well-defined wireframe for a new set of human models in the available database. To overcome such difficulty, an automated wireframe generation method would be very helpful in relieving the need for manual anthropometric definition. In order to find such an automated wireframe designing method, a natural way is using automatic segmentation methods to divide the human body model into small mesh patches. Nevertheless, different segmentation approaches could have various segmented patches, thus resulting in various wireframes. How these wireframes affect human body learning performance? In this paper, we attempt to answer this research question by comparing different segmentation methods. Different wireframes are generated with the mesh segmentation methods, and then we use these wireframes as an intermediate agent to learn the relationship between the human body mesh models and the semantic parameters. We compared the reconstruction accuracy with different generated wireframe sets and summarized several meaningful design guidelines for developing an automatic wireframe-aware segmentation method for human body learning.
基于学习感知的人体模型线框分割方法比较
线框图已被证明对从语义参数中学习人体非常有用。然而,线框的定义在很大程度上依赖于以前工作中专家的人类学经验。因此,在可用的数据库中为一组新的人体模型获得定义良好的线框图通常是不容易的。为了克服这些困难,一种自动线框生成方法将非常有助于减轻手动人体测量定义的需要。为了找到这样一种自动化线框设计方法,一种自然的方法是使用自动分割方法将人体模型分割成小的网格块。然而,不同的分割方法可能有不同的分割补丁,从而产生不同的线框。这些线框如何影响人体的学习表现?在本文中,我们试图通过比较不同的分割方法来回答这个研究问题。采用网格分割方法生成不同的线框图,然后将这些线框图作为中间代理来学习人体网格模型与语义参数之间的关系。我们比较了不同生成的线框集的重建精度,并总结了几种有意义的设计准则,用于开发用于人体学习的自动线框感知分割方法。
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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