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An adaptive localization of pupil degraded by eyelash occlusion and poor contrast

机译:睫毛闭塞和对比度差导致的瞳孔自适应定位

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The inner boundary of iris represents the pupil's edge. Hence, to work an Iris Recognition System (IRS) and the gaze tracking system expeditiously it is important to locate it as precisely as possible in a significant amout of time. In the presence of non-ideal constraints e.g. non-uniform illumination, poor contrast, eyelashes, hairs, glasses, off-angle orientation, these systems may not work well. In this paper we present an adaptive pupil localization method based on the roundness criteria. First, it applies a gray level inversion to suppress the reflections, then it performs Gray level co-occurrence matrix (GLCM) based contrast estimation. If this estimated contrast is lower than a certain threshold, the input image is made to undergo gamma correction to adjust the contrast. Subsequently, anisotropic diffusion filtering followed by log transformation is applied, which suppresses the effect of eyelash occlusion, limits the creation of small regions and highlight the dark pixels. Afterwards, a clean binary image with few regions is acquired using adaptive thresholding and some morphological operations. Finally, the roundness metric is computed for each of these regions and the region with largest roundness metric, also being greater than a prescribed threshold, declared as pupil. Experiments were carried out on few well known databases, NICE1, CASIA V3 lamp, MMU, WVU and IITD. The results are grounded upon subjective and objective evaluation; which in turn, indicate that our method outperforms a state-of-the-art approach and a deep learning approach in terms of localization capability in some unconstrained scenarios and shorter processing time. After assessing the performance of the proposed algorithm, it is manifested that it ensures a fast and robust localization of pupil in the presence of corneal reflection, poor contrast, glasses and eyelash occlusion.
机译:虹膜的内边界代表瞳孔的边缘。因此,要快速工作虹膜识别系统(IRS)和注视跟踪系统,在相当长的时间内尽可能精确地定位它很重要。在存在非理想约束的情况下照明不均匀,对比度差,睫毛,头发,眼镜,倾斜角度,这些系统可能无法正常工作。在本文中,我们提出了一种基于圆度准则的自适应瞳孔定位方法。首先,它应用灰度反转来抑制反射,然后执行基于灰度共生矩阵(GLCM)的对比度估计。如果该估计的对比度低于某个阈值,则使输入图像进行伽玛校正以调整对比度。随后,应用各向异性扩散滤波和对数变换,这抑制了睫毛遮挡的影响,限制了小区域的创建并突出了深色像素。然后,使用自适应阈值处理和一些形态学操作来获取几乎没有区域的干净二进制图像。最后,针对这些区域中的每个区域以及具有最大圆度度量(也大于规定的阈值)的区域计算圆度度量,宣布为瞳孔。实验是在少数几个知名的数据库上进行的,这些数据库包括NICE1,CASIA V3灯,MMU,WVU和IITD。结果基于主观和客观评估;这反过来表明,在某些不受约束的场景和较短的处理时间中,我们的方法在定位能力方面优于最新方法和深度学习方法。在评估了所提出算法的性能后,结果表明,在存在角膜反射,对比度差,眼镜和睫毛遮挡的情况下,它可以确保瞳孔快速,可靠地定位。

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