2015 IEEE International Conference on Signal and Image Processing Applications (ICSIPA) 2015
DOI: 10.1109/icsipa.2015.7412191
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An Iris localization method for noisy infrared iris images

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Cited by 6 publications
(6 citation statements)
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“…where G σ (r) is the Gaussian smoothing function with a scale of σ; * represents convolution; r, x 0 , y 0 are the integration radius and center, respectively; I (x, y) is the original image of iris. Existing methods generally use bilinear interpolation [13] or morphological methods [9] to avoid the interference of reflective noise. However, the essence of bilinear interpolation is to select the average grayscale value of four pixels in the vertical and horizontal directions according to a fixed distance to replace the current pixel, so it is susceptible to the interpolation distance when performing reflective noise filtering.…”
Section: Reflective Noise Removalmentioning
confidence: 99%
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“…where G σ (r) is the Gaussian smoothing function with a scale of σ; * represents convolution; r, x 0 , y 0 are the integration radius and center, respectively; I (x, y) is the original image of iris. Existing methods generally use bilinear interpolation [13] or morphological methods [9] to avoid the interference of reflective noise. However, the essence of bilinear interpolation is to select the average grayscale value of four pixels in the vertical and horizontal directions according to a fixed distance to replace the current pixel, so it is susceptible to the interpolation distance when performing reflective noise filtering.…”
Section: Reflective Noise Removalmentioning
confidence: 99%
“…A morphological method was used in previous studies [8,9] to remove the reflective noise in the image before binarizing the image. Kumar et al [8] assumed that the pupil and iris were located in the center of the image, filtered out the binary pixels close to the boundary directly to obtain the largest connected area, then estimated the center of the pupil, and used IDO to determine the iris boundaries finally.…”
Section: Introductionmentioning
confidence: 99%
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“…There are two major approaches for iris segmentation; Daugman's integrodifferential operator and Hough's transform [12], [13]. Daugman's operator is the most common method in iris recognition [14].…”
Section: Introductionmentioning
confidence: 99%
“…Iris localisation deals with detecting iris's inner and outer boundaries in iris biometric systems. Most of the iris localisation techniques are based on circle Hough transform (CHT) that detects circles in the images [1, 2]. The iris localisation is the slowest process in the iris biometric systems that do not have too big databases [3, 4]; moreover, it may not meet real‐time performance in embedded iris biometrics, where low‐speed central processing units (CPUs) are used.…”
Section: Introductionmentioning
confidence: 99%