5,993 research outputs found
Influence of segmentation on deep iris recognition performance
Despite the rise of deep learning in numerous areas of computer vision and
image processing, iris recognition has not benefited considerably from these
trends so far. Most of the existing research on deep iris recognition is
focused on new models for generating discriminative and robust iris
representations and relies on methodologies akin to traditional iris
recognition pipelines. Hence, the proposed models do not approach iris
recognition in an end-to-end manner, but rather use standard heuristic iris
segmentation (and unwrapping) techniques to produce normalized inputs for the
deep learning models. However, because deep learning is able to model very
complex data distributions and nonlinear data changes, an obvious question
arises. How important is the use of traditional segmentation methods in a deep
learning setting? To answer this question, we present in this paper an
empirical analysis of the impact of iris segmentation on the performance of
deep learning models using a simple two stage pipeline consisting of a
segmentation and a recognition step. We evaluate how the accuracy of
segmentation influences recognition performance but also examine if
segmentation is needed at all. We use the CASIA Thousand and SBVPI datasets for
the experiments and report several interesting findings.Comment: 6 pages, 3 figures, 3 tables, submitted to IWBF 201
Deep Neural Network and Data Augmentation Methodology for off-axis iris segmentation in wearable headsets
A data augmentation methodology is presented and applied to generate a large
dataset of off-axis iris regions and train a low-complexity deep neural
network. Although of low complexity the resulting network achieves a high level
of accuracy in iris region segmentation for challenging off-axis eye-patches.
Interestingly, this network is also shown to achieve high levels of performance
for regular, frontal, segmentation of iris regions, comparing favorably with
state-of-the-art techniques of significantly higher complexity. Due to its
lower complexity, this network is well suited for deployment in embedded
applications such as augmented and mixed reality headsets
A multi-biometric iris recognition system based on a deep learning approach
YesMultimodal biometric systems have been widely
applied in many real-world applications due to its ability to
deal with a number of significant limitations of unimodal
biometric systems, including sensitivity to noise, population
coverage, intra-class variability, non-universality, and
vulnerability to spoofing. In this paper, an efficient and
real-time multimodal biometric system is proposed based
on building deep learning representations for images of
both the right and left irises of a person, and fusing the
results obtained using a ranking-level fusion method. The
trained deep learning system proposed is called IrisConvNet
whose architecture is based on a combination of Convolutional
Neural Network (CNN) and Softmax classifier to
extract discriminative features from the input image without
any domain knowledge where the input image represents
the localized iris region and then classify it into one of N
classes. In this work, a discriminative CNN training scheme
based on a combination of back-propagation algorithm and
mini-batch AdaGrad optimization method is proposed for
weights updating and learning rate adaptation, respectively.
In addition, other training strategies (e.g., dropout method,
data augmentation) are also proposed in order to evaluate
different CNN architectures. The performance of the proposed
system is tested on three public datasets collected
under different conditions: SDUMLA-HMT, CASIA-Iris-
V3 Interval and IITD iris databases. The results obtained
from the proposed system outperform other state-of-the-art
of approaches (e.g., Wavelet transform, Scattering transform,
Local Binary Pattern and PCA) by achieving a Rank-1 identification rate of 100% on all the employed databases
and a recognition time less than one second per person
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