首页> 外文会议>Computational Intelligence in Biometrics: Theory, Algorithms, and Applications, 2009. CIB 2009 >Using artificial neural networks and feature saliency to identify iris measurements that contain the most discriminatory information for iris segmentation
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Using artificial neural networks and feature saliency to identify iris measurements that contain the most discriminatory information for iris segmentation

机译:使用人工神经网络和特征显着性来识别虹膜测量,该测量包含虹膜分割的最具歧视性信息

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One of the basic challenges to robust iris recognition is iris segmentation. To represent the iris, some researchers fit circles, ellipses or active contours to the boundary pixels of the segmented iris. In order to get an accurate fit, the iris boundary must first be accurately identified. Some segmentation methods operate on a pre-processed gray-scaled image, while others use a thresholded binary edge image. The Hough transform is a popular method used to search for circular or elliptical patterns within the image. Many irises are slightly elliptical, and suffer from eyelid/eyelash occlusion, specular reflections and often the pupil and iris centers are not co-located. Each of these issues can cause a segmentation error. This research uses of a feature saliency algorithm to identify which measurements, used in common iris segmentation methods, jointly contain the most discriminatory information for identify the iris boundary. Once this feature set is identified, an artificial neural network is used to near-optimally combine the segmentation measurements to better localize and identify boundary pixels of the iris. In this approach, no assumption of circularity is assumed when identifying the iris boundary. 322 measurements were tested and eight were found to contain discriminatory information that can assist in identifying the iris boundary. For occluded images, the iris masks created by the neural network were consistently more accurate than the truth mask created using the circular iris boundary assumption.
机译:强大的虹膜识别的基本挑战之一是虹膜分割。为了表示虹膜,一些研究人员将圆形,椭圆形或活动轮廓拟合到分段虹膜的边界像素。为了获得准确的拟合,必须首先准确识别虹膜边界。一些分割方法对预处理的灰度图像进行操作,而其他方法则使用阈值二进制边缘图像。霍夫变换是一种流行的方法,用于搜索图像中的圆形或椭圆形图案。许多虹膜略呈椭圆形,并受眼睑/睫毛遮挡,镜面反射的影响,并且瞳孔和虹膜中心通常不在同一位置。这些问题中的每一个都会导致细分错误。这项研究使用特征显着性算法来识别常见虹膜分割方法中使用的哪些测量,共同包含用于识别虹膜边界的最具区分性的信息。一旦确定了此功能集,便会使用人工神经网络将分割测量值进行近乎最佳的组合,以更好地定位和识别虹膜的边界像素。在这种方法中,在识别虹膜边界时不假定圆度。测试了322个测量值,发现其中八个包含可帮助识别虹膜边界的歧视性信息。对于被遮挡的图像,由神经网络创建的虹膜蒙版始终比使用圆形虹膜边界假设创建的真相蒙版更加准确。

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