Difficult detection: A comparison of two different approaches to eye detection for unconstrained environments

W. Scheirer, A. Rocha, B. Heflin, T. Boult
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引用次数: 10

Abstract

Eye detection is a well studied problem for the constrained face recognition problem, where we find controlled distances, lighting, and limited pose variation. A far more difficult scenario for eye detection is the unconstrained face recognition problem, where we do not have any control over the environment or the subject. In this paper, we take a look at two different approaches for eye detection under difficult acquisition circumstances, including low-light, distance, pose variation, and blur. A new machine learning approach and several correlation filter approaches, including a new adaptive variant, are compared. We present experimental results on a variety of controlled data sets (derived from FERET and CMU PIE) that have been re-imaged under the difficult conditions of interest with an EMCCD based acquisition system. The results of our experiments show that our new detection approaches are extremely accurate under all tested conditions, and significantly improve detection accuracy compared to a leading commercial detector. This unique evaluation brings us one step closer to a better solution for the unconstrained face recognition problem.
难以检测:比较两种不同的眼睛检测方法在无约束环境
眼睛检测是约束人脸识别问题的一个很好的研究问题,我们发现控制距离,照明和有限的姿态变化。眼睛检测的一个更困难的场景是无约束的人脸识别问题,在这种情况下,我们对环境或对象没有任何控制。在本文中,我们研究了两种不同的眼睛检测方法,包括低光、距离、姿态变化和模糊。比较了一种新的机器学习方法和几种相关滤波方法,包括一种新的自适应变量。我们展示了各种受控数据集(来自FERET和CMU PIE)的实验结果,这些数据集已经在基于EMCCD的采集系统的困难条件下重新成像。我们的实验结果表明,我们的新检测方法在所有测试条件下都非常准确,并且与领先的商用检测器相比显着提高了检测精度。这种独特的评价使我们离无约束人脸识别问题的更好解决方案又近了一步。
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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