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DeepIrisNet2: Learning Deep-IrisCodes from Scratch for Segmentation-Robust Visible Wavelength and Near Infrared Iris Recognition

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arxiv 1902.05390 v1 pith:NNCBEKDS submitted 2019-02-06 cs.CV cs.LGstat.ML

DeepIrisNet2: Learning Deep-IrisCodes from Scratch for Segmentation-Robust Visible Wavelength and Near Infrared Iris Recognition

classification cs.CV cs.LGstat.ML
keywords irissegmentationdeepirisnet2frameworkboundingboxesdatasetslabeled
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We first, introduce a deep learning based framework named as DeepIrisNet2 for visible spectrum and NIR Iris representation. The framework can work without classical iris normalization step or very accurate iris segmentation; allowing to work under non-ideal situation. The framework contains spatial transformer layers to handle deformation and supervision branches after certain intermediate layers to mitigate overfitting. In addition, we present a dual CNN iris segmentation pipeline comprising of a iris/pupil bounding boxes detection network and a semantic pixel-wise segmentation network. Furthermore, to get compact templates, we present a strategy to generate binary iris codes using DeepIrisNet2. Since, no ground truth dataset are available for CNN training for iris segmentation, We build large scale hand labeled datasets and make them public; i) iris, pupil bounding boxes, ii) labeled iris texture. The networks are evaluated on challenging ND-IRIS-0405, UBIRIS.v2, MICHE-I, and CASIA v4 Interval datasets. Proposed approach significantly improves the state-of-the-art and achieve outstanding performance surpassing all previous methods.

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  1. ThirdEye: Triplet Based Iris Recognition without Normalization

    cs.CV 2019-07 unverdicted novelty 4.0

    ThirdEye applies triplet convolutional neural networks directly to segmented iris images without normalization, reporting EERs of 1.32% on ND-0405, 9.20% on UbirisV2, and 0.59% on IITD, improving prior results on the ...