3D Iris Recognition using Spin Images

Daniel P. Benalcazar, Daniel A. Montecino, Jorge E. Zambrano, C. Pérez, K. Bowyer
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引用次数: 3

Abstract

The high demand for ever more accurate biometric systems has driven the search for methods that reconstruct the iris surface in a 3D model. The intent in adding the depth dimension is to improve accuracy even in large databases. Here, we present a novel approach to iris recognition from 3D models. First, the iris 3D model is reconstructed from a single image using irisDepth, a CNN based method. Then, a 3D descriptor called Spin Image is obtained for keypoints of the 3D model. After that, matches are found between keypoints in the query and the reference 3D models using k-dimensional trees. Finally, those keypoint matches are used to determine the spatial transformation that best aligns the 3D models. A combination of the transformation error and the inlier ratio is used as the metric to assess the similarity of two iris 3D models. We applied this method in a dataset of 100 eyes and 2,000 iris 3D models. Our results indicate that using the proposed method is more effective than alternative methods, such as Dougman's iris code, point-to-point distance between the 3D models, the 3D rubber sheet model, and CNN-based methods.
使用旋转图像的3D虹膜识别
对更精确的生物识别系统的高需求推动了对虹膜表面3D模型重建方法的研究。添加深度维度的目的是提高即使在大型数据库中的准确性。本文提出了一种基于三维模型的虹膜识别新方法。首先,利用irisDepth(一种基于CNN的方法)从单幅图像重建虹膜三维模型。然后,得到三维模型关键点的三维描述子Spin Image。之后,使用k维树在查询中的关键点和参考3D模型之间找到匹配。最后,使用这些关键点匹配来确定最佳对齐3D模型的空间转换。利用变换误差和内嵌比的组合作为度量来评估两个虹膜三维模型的相似性。我们将这种方法应用于100只眼睛和2000个虹膜3D模型的数据集。我们的研究结果表明,使用该方法比其他方法(如Dougman的虹膜编码、3D模型之间的点对点距离、3D橡胶片模型和基于cnn的方法)更有效。
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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