一个框架,用于客观评估分割算法使用的基础真理的人体分割3d模型

H. Benhabiles, Jean-Philippe Vandeborre, G. Lavoué, M. Daoudi
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引用次数: 51

摘要

本文提出了一种基于真值语料库的三维网格分割算法评价方法。该语料库由一组不同类别(动物,家具等)的3d模型组成,这些模型与人类观察者产生的几个手动分割相关联。我们定义了一个度量来量化3d模型的两个部分之间的一致性,无论它们的粒度如何。最后,我们提出了一个客观的质量分数,用于基于这些度量和基础真值语料库的3d网格分割算法的自动评估。因此,自动算法获得的分割质量通过质量分数在定量的方式进行评估,并在客观的基础上通过groundtruth语料库进行评估。我们的方法是通过评估两种最新的3d网格分割方法来说明的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A framework for the objective evaluation of segmentation algorithms using a ground-truth of human segmented 3D-models
In this paper, we present an evaluation method of 3D-mesh segmentation algorithms based on a ground-truth corpus. This corpus is composed of a set of 3D-models grouped in different classes (animals, furnitures, etc.) associated with several manual segmentations produced by human observers. We define a measure that quantifies the consistency between two segmentations of a 3D-model, whatever their granularity. Finally, we propose an objective quality score for the automatic evaluation of 3D-mesh segmentation algorithms based on these measures and on the ground-truth corpus. Thus the quality of segmentations obtained by automatic algorithms is evaluated in a quantitative way thanks to the quality score, and on an objective basis thanks to the groundtruth corpus. Our approach is illustrated through the evaluation of two recent 3D-mesh segmentation methods.
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