论文标题
人工瞳孔扩张以进行虹膜语义分割的数据增强
Artificial Pupil Dilation for Data Augmentation in Iris Semantic Segmentation
论文作者
论文摘要
生物识别技术是根据个人的内在解剖或行为特征(例如指纹,面部,虹膜,步态和声音)来识别个人的科学。虹膜识别是最成功的方法之一,因为它利用了人类虹膜丰富的质地,即使对于双胞胎也是独特的,并且不会随着年龄的增长而降级。现代的虹膜识别方法利用深度学习将虹膜的有效部分从眼睛的其余部分分割出来,因此可以对其进行编码,存储和比较。本文旨在通过引入一种新型的数据增强技术来提高虹膜语义分割系统的准确性。我们的方法可以将一定扩张水平的虹膜图像转换为任何所需的扩张水平,从而增加小型数据集的训练示例的变异性和数量。提出的方法很快,不需要培训。结果表明,对于高瞳孔扩张的图像,我们的数据增强方法可以提高分段准确性高达15%,即使在极端扩张下,这也会产生更可靠的IRIS识别管道。
Biometrics is the science of identifying an individual based on their intrinsic anatomical or behavioural characteristics, such as fingerprints, face, iris, gait, and voice. Iris recognition is one of the most successful methods because it exploits the rich texture of the human iris, which is unique even for twins and does not degrade with age. Modern approaches to iris recognition utilize deep learning to segment the valid portion of the iris from the rest of the eye, so it can then be encoded, stored and compared. This paper aims to improve the accuracy of iris semantic segmentation systems by introducing a novel data augmentation technique. Our method can transform an iris image with a certain dilation level into any desired dilation level, thus augmenting the variability and number of training examples from a small dataset. The proposed method is fast and does not require training. The results indicate that our data augmentation method can improve segmentation accuracy up to 15% for images with high pupil dilation, which creates a more reliable iris recognition pipeline, even under extreme dilation.