Multi-spectral Iris Segmentation in Visible Wavelengths

Torsten Schlett, C. Rathgeb, C. Busch
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引用次数: 5

Abstract

While traditional iris recognition systems operate using near-infrared images, visible wavelength approaches have gained attention in recent years due to a variety of reasons, such as the deployment of iris recognition in consumer grade mobile devices. Iris segmentation, the process of localizing the iris part of an image, is a vital step in iris recognition. The segmentation of the iris usually involves a detection of inner and outer iris boundaries, a detection of eyelids, an exclusion of eyelashes as well as contact lens rings and a scrubbing of specular reflections. This work presents a comprehensive multi-spectral analysis to improve iris segmentation accuracy in visible wavelengths by transforming iris images before their segmentation, which is done by extracting spectral components in form of RGB color channels. The procedure is evaluated by utilizing the MobBIO dataset, open-source iris segmentation tools, and the NICE.I error measures. Additionally, a segmentation-level fusion procedure based on existing work is performed; an eye color analysis is examined, with no clear connection to the multi-spectral procedure being found; and another analysis highlights further potential improvement by assuming perfect selection within various multi-spectral segmentation result sets.
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可见光多光谱虹膜分割
虽然传统的虹膜识别系统使用近红外图像操作,但由于各种原因,例如虹膜识别在消费级移动设备中的部署,可见波长方法近年来受到了关注。虹膜分割是虹膜识别的关键步骤,它是对图像中虹膜部分进行定位的过程。虹膜的分割通常包括虹膜内外边界的检测、眼睑的检测、睫毛和隐形眼镜环的排除以及镜面反射的剔除。本文提出了一种全面的多光谱分析方法,通过在分割前对虹膜图像进行变换,以RGB颜色通道的形式提取光谱成分,从而提高虹膜在可见光波段的分割精度。利用MobBIO数据集、开源虹膜分割工具和NICE对该过程进行评估。误差测量。此外,执行基于现有工作的分割级融合程序;检查了眼睛颜色分析,发现与多光谱程序没有明确的联系;另一项分析强调了进一步改进的潜力,假设在各种多光谱分割结果集中完美选择。
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