Hidden assumption of face recognition evaluation under different quality conditions

H. Al-Assam, Ali J. Abboud, S. Jassim
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引用次数: 6

Abstract

Automatic face recognition remains a challenging task due to factors such as variations in recording condition, pose, and age. Many schemes have emerged to enhance the performance of face recognition to deal with poor quality facial images. It has been shown that reporting average accuracy, to cover a wide range of image quality, does not reflect the system's for any specific quality levels. This raises the need to evaluate biometric system's performance at each quality level separately. Challenging face databases have been recorded with varied face image qualities. Unfortunately, the performance of face recognition schemes under different quality conditions, reported in the literature, are evaluated under hidden assumption which cannot be achieved in real-life applications. In fact, this problem could be a source of attack that interferes with the verification through manipulating the recording condition. In order to remedy this problem, two requirements are to be imposed: 1) the matching criteria should be based an Adaptive Quality-Based Threshold (AQBT) and 2) at the verification stage the quality level of an input face image should be determined and classified into one of a non-overlapping predefined quality levels. We illustrate our idea by experiments conducted on the extended Yale B face benchmark dataset. Our experimental results indicate that if AQBT is not adopted, false rejection rates becomes very high (always reject) when using low quality face images.
不同质量条件下人脸识别评价的隐藏假设
由于记录条件、姿势和年龄等因素的变化,自动人脸识别仍然是一项具有挑战性的任务。为了处理质量较差的人脸图像,已经出现了许多提高人脸识别性能的方案。它已经表明,报告平均精度,以涵盖广泛的图像质量,并不能反映系统的任何特定的质量水平。这就需要在每个质量水平上分别评估生物识别系统的性能。具有挑战性的人脸数据库记录了不同的人脸图像质量。遗憾的是,文献中报道的人脸识别方案在不同质量条件下的性能都是在隐藏假设下进行评估的,这在实际应用中是无法实现的。事实上,这个问题可能是通过操纵记录条件来干扰验证的攻击源。为了解决这一问题,需要提出两个要求:1)匹配标准应基于自适应质量阈值(AQBT); 2)在验证阶段,应确定输入人脸图像的质量水平,并将其分类为一个不重叠的预定义质量水平。我们通过在扩展的Yale B人脸基准数据集上进行的实验来说明我们的想法。我们的实验结果表明,如果不采用AQBT,在使用低质量的人脸图像时,错误拒绝率会非常高(总是被拒绝)。
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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