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Iris segmentation in non-ideal images using graph cuts

机译:使用图割在非理想图像中进行虹膜分割

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A non-ideal iris image segmentation approach based on graph cuts is presented that uses both the appearance and eye geometry information. A texture measure based on gradients is computed to discriminate between eyelash and non-eyelash regions, combined with image intensity differences between the iris, pupil, and the background (region surrounding the iris) are utilized as cues for segmentation. The texture and intensity distributions for the various regions are learned from histogramming and explicit sampling of the pixels estimated to belong to the corresponding regions. The image is modeled as a Markov Random Field and the energy minimization is achieved via graph cuts to assign each image pixel one of the four possible labels: iris, pupil, background, and eyelash. Furthermore, the iris region is modeled as an ellipse, and the best fitting ellipse to the initial pixel based iris segmentation is computed to further refine the segmented region. As a result, the iris region mask and the parameterized iris shape form the outputs of the proposed approach that allow subsequent iris recognition steps to be performed for the segmented irises. The algorithm is unsupervised and can deal with non-ideality in the iris images due to out-of-plane rotation of the eye, iris occlusion by the eyelids and the eyelashes, multi-modal iris grayscale intensity distribution, and various illumination effects. The proposed segmentation approach is tested on several publicly available non-ideal near infra red (NIR) iris image databases. We compare both the segmentation error and the resulting recognition error with several leading techniques, demonstrating significantly improved results with the proposed technique.
机译:提出了一种基于图形切割的非理想虹膜图像分割方法,该方法同时使用外观和眼睛几何信息。计算基于渐变的纹理度量以区分睫毛和非睫毛区域,并结合虹膜,瞳孔和背景(虹膜周围的区域)之间的图像强度差异作为分割的线索。从估计属于相应区域的像素的直方图和显式采样中了解到各个区域的纹理和强度分布。图像被建模为马尔可夫随机场,并且通过图形切割为每个图像像素分配四个可能的标签之一:虹膜,瞳孔,背景和睫毛,从而实现了能量最小化。此外,将虹膜区域建模为椭圆,并计算出与基于初始像素的虹膜分割的最佳拟合椭圆,以进一步优化分割区域。结果,虹膜区域掩模和参数化的虹膜形状形成了所提出方法的输出,该方法允许针对分段的虹膜执行后续的虹膜识别步骤。该算法不受监督,可以处理由于眼睛平面外旋转,眼睑和睫毛的虹膜闭塞,多模式虹膜灰度强度分布以及各种照明效果而导致的虹膜图像中的非理想性。在几个公开可用的非理想近红外(NIR)虹膜图像数据库上测试了建议的分割方法。我们将分割误差和由此产生的识别误差与几种领先技术进行了比较,证明了所提出技术的显着改善结果。

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