To date, the comparison of Statistical Shape Models (SSMs) is often solely performance-based and carried out by means of simplistic metrics such as compactness, generalization, or specificity. Any similarities or differences between the actual shape spaces can neither be visualized nor quantified. In this paper, we present a first method to compare two SSMs in dense correspondence by computing approximate intersection spaces and set-theoretic differences between the affine vector spaces spanned by the models. To this end, we approximate the distribution of shapes lying in the intersection space using Markov Chain Monte Carlo, and then apply Principal Component Analysis (PCA) to its samples. By representing the resulting spaces again as an SSM, our method enables an easy and intuitive analysis of similarities between two model's shape spaces. We estimate differences between SSMs in a similar manner; here, however, the resulting shape spaces are not linear vector spaces anymore and we do not apply PCA but instead use the posterior samples for visualization. We showcase the proposed algorithm qualitatively by computing and analyzing intersection spaces and differences between publicly available face models focusing on gender-specific male and female as well as identity and expression models. Our quantitative evaluation based on SSMs built from synthetic and real-world data sets provides detailed evidence that the introduced method is able to recover ground-truth intersection spaces and differences. Finally, we demonstrate that the proposed algorithm can be easily adapted to also compute intersections and differences between color spaces.
翻译:迄今为止,统计形状模型(SSMM)的比较往往只是基于性能的比较,并且采用简单化的衡量标准,如紧凑性、一般化或特殊性等,对统计形状模型(SSMM)进行比较。实际形状空间之间的任何相似或差异都无法视觉化或量化。在本文中,我们提出了第一个方法,通过计算相近交叉空间和模型所覆盖的同系矢量空间之间的定理差异,对密集对应的两种SMS进行比较。为此,我们利用Markov链链蒙特卡洛,对交叉空间中的形状分布进行比较,然后将主要组成部分分析(PCA)应用到其样本中。我们的方法再次将由此产生的空间作为SMSM,使我们能够对两个模型之间的相似之处进行简单和直观的分析。我们以类似的方式估计SMS之间的差异;然而,由此形成的形状空间不再是线性矢量的矢量空间了,我们不使用海象标来进行可视化。我们通过计算和分析相互交叉空间以及公开存在的面模型之间的差异,我们以SMSM为基础,并且能够从合成的地面模型中进行定量分析。