Agent-based image iris segmentation and multiple views boundary refining

R. D. Labati, V. Piuri, F. Scotti
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引用次数: 35

Abstract

The paper presents two different methods to deal with the problem of iris segmentation: an agent-based method capable to localize the center of the pupil and a method to process the iris boundaries by a multiple views approach. In the first method, an agent corresponds to the coordinates of a specific point of analysis in the input image. A population of agents is deployed in the input image, then, each agent collects local information concerning the intensity patterns visible in its region of interest. By iterations, an agent changes its position accordingly to the local properties, moving towards the estimation of the pupil center. If no available information is present in its region of interest, the agent will move itself along a random walk. After few iterations, the population tends to spread and then concentrate in the inner portion of the pupil. Once the center of the pupil has been located, the inner and outer iris boundaries are refined by an approach based on multiple views analysis. This method starts with a set of points that can be considered as an approximation of the pupil center. For each point, a detailed estimation of the iris boundaries is computed, and the final description of the iris boundaries is obtained by merging all the obtained descriptions. The two methods were tested using CASIA v.3 and UBIRIS v.2 images. Experiments show that the proposed approaches are feasible, also in eye images taken in noisy or non-ideal conditions, achieving a total error segmentation accuracy up to 97%.
基于agent的图像虹膜分割与多视图边界细化
本文提出了两种不同的方法来处理虹膜分割问题:一种基于agent的瞳孔中心定位方法和一种基于多视图的虹膜边界处理方法。在第一种方法中,代理对应于输入图像中特定分析点的坐标。在输入图像中部署一组代理,然后,每个代理收集有关其感兴趣区域中可见的强度模式的本地信息。通过迭代,agent根据局部属性改变自己的位置,向瞳孔中心的估计移动。如果在其感兴趣的区域内没有可用的信息,代理将沿着随机行走移动自己。经过几次迭代,种群倾向于扩散,然后集中在瞳孔的内部。瞳孔中心定位后,采用基于多视图分析的方法细化内外虹膜边界。这种方法从一组点开始,这些点可以被认为是瞳孔中心的近似值。对于每个点,计算虹膜边界的详细估计,并将得到的所有描述合并得到虹膜边界的最终描述。使用CASIA v.3和UBIRIS v.2图像对两种方法进行了测试。实验表明,该方法是可行的,对于噪声或非理想条件下的人眼图像,总误差分割精度可达97%。
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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