2020
DOI: 10.1016/j.neunet.2019.11.009
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Person identification using fusion of iris and periocular deep features

Abstract: A novel method for person identification based on the fusion of iris and periocular biometrics has been proposed in this paper. The challenges for image acquisition for Near-Infrared or Visual Wavelength lights under constrained and unconstrained environments have been considered here. The proposed system is divided into image preprocessing data augmentation followed by feature learning for classification components. In image preprocessing an annular iris, the portion is segmented out from an eyeball image and… Show more

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Cited by 64 publications
(23 citation statements)
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References 52 publications
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“…The performances of the Active Contour in relation to the integro-differential operator, and the Hough Transform are presented in Table 1 until Table 4. These tables appear to present the results using varying number of iris and iris per individual, and these could be related to the results reported by [27][28].…”
Section: Discussion Of Resultssupporting
confidence: 57%
“…The performances of the Active Contour in relation to the integro-differential operator, and the Hough Transform are presented in Table 1 until Table 4. These tables appear to present the results using varying number of iris and iris per individual, and these could be related to the results reported by [27][28].…”
Section: Discussion Of Resultssupporting
confidence: 57%
“…21 The fusing information obtained from the iris and pupil or periocular systems increases the performance of personal identification systems. 21,22 Personal identification systems based on ocular information have already been put to practical use.…”
Section: Ocular Informationmentioning
confidence: 99%
“…For generating the specific and concise representation of each modality, they applied a maxout in the CNN and then merged the distinct features of both modalities with the help of a weighted concatenation process. In the same manner, Umer et al [28] combined the periocular and iris features for the biometric recognition of a person. They deployed different deep learning based CNN frameworks such as ResNet-50, VGG-16 and Inception-v3 for feature extraction and classification.…”
Section: Related Workmentioning
confidence: 99%