特征空间中面向识别的虹膜图像质量评价

Leyuan Wang, Kunbo Zhang, Min Ren, Yunlong Wang, Zhenan Sun
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引用次数: 2

摘要

由于不受控制的环境和受试者的不合作,在现实场景中捕获的虹膜图像中有很大一部分质量很差。为了保证识别算法不受低质量图像的影响,传统的基于手工因素的方法会丢弃大部分图像,这会导致系统超时,影响用户体验。针对这一问题,提出了一种面向识别的虹膜图像质量度量与评价方法。该方法以虹膜图像特征空间内的嵌入距离(DFS)作为质量度量,基于深度神经网络的关注机制进行预测。本文提出的质量度量可以显著提高识别算法的性能,同时减少被丢弃用于识别的图像数量,优于基于手工制作因子的虹膜质量评估方法。提出了图像拒绝率(IRR)与等错误率(EER)之间的关系,以评价在相同图像质量分布和相同识别算法下质量评估算法的性能。与基于手工因子的方法相比,该方法是弥合图像质量评估与生物特征识别之间差距的一种尝试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition Oriented Iris Image Quality Assessment in the Feature Space
A large portion of iris images captured in real world scenarios are poor quality due to the uncontrolled environment and the non-cooperative subject. To ensure that the recognition algorithm is not affected by low-quality images, traditional hand-crafted factors based methods discard most images, which will cause system timeout and disrupt user experience. In this paper, we propose a recognition-oriented quality metric and assessment method for iris image to deal with the problem. The method regards the iris image em-beddings Distance in Feature Space (DFS) as the quality metric and the prediction is based on deep neural networks with the attention mechanism. The quality metric proposed in this paper can significantly improve the performance of the recognition algorithm while reducing the number of images discarded for recognition, which is advantageous over hand-crafted factors based iris quality assessment methods. The relationship between Image Rejection Rate (IRR) and Equal Error Rate (EER) is proposed to evaluate the performance of the quality assessment algorithm under the same image quality distribution and the same recognition algorithm. Compared with hand-crafted factors based methods, the proposed method is a trial to bridge the gap between the image quality assessment and biometric recognition.
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