3D Face Reconstruction Error Decomposed: A Modular Benchmark for Fair and Fast Method Evaluation.

Evangelos Sariyanidi, Claudio Ferrari, Federico Nocentini, Stefano Berretti, Andrea Cavallaro, Birkan Tunc
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Abstract

Computing the standard benchmark metric for 3D face reconstruction, namely geometric error, requires a number of steps, such as mesh cropping, rigid alignment, or point correspondence. Current benchmark tools are monolithic (they implement a specific combination of these steps), even though there is no consensus on the best way to measure error. We present a toolkit for a Modularized 3D Face reconstruction Benchmark (M3DFB), where the fundamental components of error computation are segregated and interchangeable, allowing one to quantify the effect of each. Furthermore, we propose a new component, namely correction, and present a computationally efficient approach that penalizes for mesh topology inconsistency. Using this toolkit, we test 16 error estimators with 10 reconstruction methods on two real and two synthetic datasets. Critically, the widely used ICP-based estimator provides the worst benchmarking performance, as it significantly alters the true ranking of the top-5 reconstruction methods. Notably, the correlation of ICP with the true error can be as low as 0.41. Moreover, non-rigid alignment leads to significant improvement (correlation larger than 0.90), highlighting the importance of annotating 3D landmarks on datasets. Finally, the proposed correction scheme, together with non-rigid warping, leads to an accuracy on a par with the best non-rigid ICP-based estimators, but runs an order of magnitude faster. Our open-source codebase is designed for researchers to easily compare alternatives for each component, thus helping accelerating progress in benchmarking for 3D face reconstruction and, furthermore, supporting the improvement of learned reconstruction methods, which depend on accurate error estimation for effective training.

三维人脸重构误差分解:一种公平快速评价方法的模块化基准。
计算三维人脸重建的标准基准度量,即几何误差,需要许多步骤,如网格裁剪,刚性对齐或点对应。当前的基准测试工具是单一的(它们实现了这些步骤的特定组合),尽管对于测量误差的最佳方法还没有达成共识。我们提出了一个模块化3D人脸重建基准(M3DFB)的工具包,其中误差计算的基本组件是分离的和可互换的,允许量化每个组件的影响。此外,我们提出了一个新的组件,即校正,并提出了一种计算效率高的方法来惩罚网格拓扑不一致。使用该工具包,我们在两个真实数据集和两个合成数据集上测试了16个误差估计器和10种重构方法。关键的是,广泛使用的基于icp的估计器提供了最差的基准测试性能,因为它显着改变了前5种重建方法的真实排名。值得注意的是,ICP与真实误差的相关性可以低至0.41。此外,非刚性对齐导致显著改善(相关性大于0.90),突出了在数据集上注释3D地标的重要性。最后,提出的校正方案,加上非刚性翘曲,导致精度与最佳的非刚性icp估计器相当,但运行速度快了一个数量级。我们的开源代码库是为研究人员设计的,可以方便地比较每个组件的替代方案,从而有助于加快3D人脸重建基准测试的进展,此外,支持学习重建方法的改进,这些方法依赖于准确的误差估计来进行有效的训练。
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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