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An Empirical Study of Face Recognition under Variations

机译:变化下人脸识别的实证研究

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摘要

Face recognition (FR) has recently made remark- able progress given the extraordinary capabilities of modern deep learning(DL) models. Though superior performance of DL based methods over human has been reported on benchmark dataset, it remains an open problem how those systems work in real-world condition with variations such as head pose, lighting, occlusion and image noises, in particular, in comparison to conventional FR approaches. It is hard to answer this question in a quantitative manner as current benchmark datasets are in lack of full range of variations. In this paper we propose a flexible approach to simulate face images under different variations with controllable degrees and based on the simulated dataset we quantitatively study how modern DL based and conventional FR methods perform. Based on the observations on a large number of synthesized face images, we draw several conclusions such as how head pose pitch and yaw variations will influence the FR systems and which part on the face is the most significant region, and in which situation conventional methods still show some advantages. The findings will not only be useful to assess current FR system in a quantitative manner but also shed light on future FR system design and data augmentation.
机译:鉴于现代深度学习(DL)模型的非凡功能,人脸识别(FR)最近取得了显着进步。尽管已经在基准数据集上报告了基于DL的方法优于人类的性能,但是这些系统如何在现实条件下工作,尤其是与头部姿势,照明,遮挡和图像噪声等变化相比,仍然是一个悬而未决的问题。传统的阻燃方法。由于当前的基准数据集缺乏完整的变化范围,因此很难以定量的方式回答这个问题。在本文中,我们提出了一种灵活的方法来模拟具有可控程度的不同变化下的人脸图像,并且基于模拟数据集,我们定量研究了基于DL的现代FR方法和传统FR方法的性能。基于对大量合成人脸图像的观察,我们得出了一些结论,例如头部姿态俯仰和偏航角变化将如何影响FR系统,以及脸部哪一部分是最重要的区域,以及在哪种情况下常规方法仍然显示一些优势。这些发现不仅将有助于定量评估当前的阻燃系统,而且还将为未来的阻燃系统设计和数据扩充提供启示。

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