Min Ren, Caiyong Wang, Yunlong Wang, Zhenan Sun, T. Tan
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引用次数: 5
摘要
虹膜识别是一种可靠的个人身份识别方法,但其准确性仍有很大的提高空间,特别是在约束较少的情况下。例如,头部姿势的自由移动可能会导致虹膜图像之间的旋转差异较大。光照变化会导致虹膜纹理不规则变形。为了对具有头部旋转的类内虹膜图像进行鲁棒匹配,现有的解决方案通常需要在虹膜图像预处理中在确定范围内穷举搜索进行精确的对准操作,或者在虹膜特征匹配中暴力搜索最小汉明距离。在野生环境中,虹膜旋转的不确定性比在约束条件下要大得多,在确定的范围内进行穷举搜索是不可行的。本文提出了一种统一的特征级解决方案来实现无对齐和失真的虹膜识别。提出了一种基于深度学习的自由对齐虹膜网络(Alignment Free Iris Network, AFINet)方法,该方法利用可训练的局部聚合描述子向量(Vector of local Aggregated Descriptors)编码器NetVLAD[18]来解耦局部表示与其空间位置之间的相关性。利用可变形卷积[5]通过密集自适应采样克服虹膜纹理失真。在三个公共虹膜图像数据库和模拟退化数据库上的大量实验结果表明,AFINet显著优于当前的虹膜识别方法。
Alignment Free and Distortion Robust Iris Recognition
Iris recognition is a reliable personal identification method but there is still much room to improve its accuracy especially in less-constrained situations. For example, free movement of head pose may cause large rotation difference between iris images. And illumination variations may cause irregular distortion of iris texture. To match intra-class iris images with head rotation robustly, the existing solutions usually need a precise alignment operation by exhaustive search within a determined range in iris image preprosessing or brute-force searching the minimum Hamming distance in iris feature matching. In the wild enviroments, iris rotation is of much greater uncertainty than that in constrained situations and exhaustive search within a determined range is impracticable. This paper presents a unified feature-level solution to both alignment free and distortion robust iris recognition in the wild. A new deep learning based method named Alignment Free Iris Network (AFINet) is proposed, which utilizes a trainable VLAD (Vector of Locally Aggregated Descriptors) encoder called NetVLAD [18] to decouple the correlations between local representations and their spatial positions. And deformable convolution [5] is leveraged to overcome iris texture distortion by dense adaptive sampling. The results of extensive experiments on three public iris image databases and the simulated degradation databases show that AFINet significantly outperforms state-of-art iris recognition methods.