Meta-evaluation for 3D Face Reconstruction Via Synthetic Data.

Evangelos Sariyanidi, Claudio Ferrari, Stefano Berretti, Robert T Schultz, Birkan Tunc
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Abstract

The standard benchmark metric for 3D face reconstruction is the geometric error between reconstructed meshes and the ground truth. Nearly all recent reconstruction methods are validated on real ground truth scans, in which case one needs to establish point correspondence prior to error computation, which is typically done with the Chamfer (i.e., nearest neighbor) criterion. However, a simple yet fundamental question have not been asked: Is the Chamfer error an appropriate and fair benchmark metric for 3D face reconstruction? More generally, how can we determine which error estimator is a better benchmark metric? We present a meta-evaluation framework that uses synthetic data to evaluate the quality of a geometric error estimator as a benchmark metric for face reconstruction. Further, we use this framework to experimentally compare four geometric error estimators. Results show that the standard approach not only severely underestimates the error, but also does so inconsistently across reconstruction methods, to the point of even altering the ranking of the compared methods. Moreover, although non-rigid ICP leads to a metric with smaller estimation bias, it could still not correctly rank all compared reconstruction methods, and is significantly more time consuming than Chamfer. In sum, we show several issues present in the current benchmarking and propose a procedure using synthetic data to address these issues.

通过合成数据进行 3D 人脸重建的元评估。
三维人脸重建的标准基准指标是重建网格与地面实况之间的几何误差。几乎所有最新的重建方法都是在真实地面扫描的基础上进行验证的,在这种情况下,我们需要在计算误差之前建立点对应关系,这通常是通过倒角(即最近邻)准则来实现的。然而,有一个简单而又基本的问题尚未提出:倒角误差是否是三维人脸重建的适当而公平的基准指标?更广义地说,我们如何确定哪个误差估计器是更好的基准指标?我们提出了一个元评估框架,利用合成数据来评估作为人脸重建基准指标的几何误差估计器的质量。此外,我们还利用这一框架对四种几何误差估计器进行了实验性比较。结果表明,标准方法不仅严重低估了误差,而且不同重建方法的低估程度也不一致,甚至改变了比较方法的排名。此外,虽然非刚性 ICP 导致了较小的估计偏差,但它仍然无法对所有比较过的重建方法进行正确排名,而且比 Chamfer 耗时更多。总之,我们指出了当前基准测试中存在的几个问题,并提出了一种使用合成数据的程序来解决这些问题。
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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