Data-driven segmentation of post-mortem iris images

Mateusz Trokielewicz, A. Czajka
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引用次数: 16

Abstract

This paper presents a method for segmenting iris images obtained from the deceased subjects, by training a deep convolutional neural network (DCNN) designed for the purpose of semantic segmentation. Post-mortem iris recognition has recently emerged as an alternative, or additional, method useful in forensic analysis. At the same time it poses many new challenges from the technological standpoint, one of them being the image segmentation stage, which has proven difficult to be reliably executed by conventional iris recognition methods. Our approach is based on the SegNet architecture, fine-tuned with 1,300 manually segmented post-mortem iris images taken from the Warsaw-BioBase-Post-Mortem-Iris v1.0 database. The experiments presented in this paper show that this data-driven solution is able to learn specific deformations present in post-mortem samples, which are missing from alive irises, and offers a considerable improvement over the state-of-the-art, conventional segmentation algorithm (OSIRIS): the Intersection over Union (IoU) metric was improved from 73.6% (for OSIRIS) to 83% (for DCNN-based presented in this paper) averaged over subject-disjoint, multiple splits of the data into train and test subsets. This paper offers the first known to us method of automatic processing of post-mortem iris images. We offer source codes with the trained DCNN that perform end-to-end segmentation of post-mortem iris images, as described in this paper. Also, we offer binary masks corresponding to manual segmentation of samples from Warsaw-BioBase-Post-Mortem-Iris v1.0 database to facilitate development of alternative methods for post-mortem iris segmentation.
数据驱动的死后虹膜图像分割
本文提出了一种通过训练用于语义分割的深度卷积神经网络(DCNN)对死者虹膜图像进行分割的方法。尸体虹膜识别最近成为法医分析的一种替代或附加方法。同时,从技术角度提出了许多新的挑战,其中之一是图像分割阶段,传统的虹膜识别方法难以可靠地执行。我们的方法基于SegNet架构,并对取自Warsaw-BioBase-Post-Mortem-Iris v1.0数据库的1300张手动分割的死后虹膜图像进行了微调。本文中提出的实验表明,这种数据驱动的解决方案能够学习死后样本中存在的特定变形,这些变形是活体虹膜中缺失的,并且比最先进的传统分割算法(OSIRIS)提供了相当大的改进:交集/联合(IoU)度量从73.6% (OSIRIS)提高到83%(本文中基于dcnn的),平均在主题不相交的情况下,将数据多次分割为训练和测试子集。本文提出了我们所知的第一个自动处理死后虹膜图像的方法。我们提供了经过训练的DCNN的源代码,可以对死后虹膜图像进行端到端分割,如本文所述。此外,我们还提供了对应于Warsaw-BioBase-Post-Mortem-Iris v1.0数据库中样本的手动分割的二进制掩模,以促进开发用于尸检虹膜分割的替代方法。
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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