508 research outputs found
Multispectral Palmprint Encoding and Recognition
Palmprints are emerging as a new entity in multi-modal biometrics for human
identification and verification. Multispectral palmprint images captured in the
visible and infrared spectrum not only contain the wrinkles and ridge structure
of a palm, but also the underlying pattern of veins; making them a highly
discriminating biometric identifier. In this paper, we propose a feature
encoding scheme for robust and highly accurate representation and matching of
multispectral palmprints. To facilitate compact storage of the feature, we
design a binary hash table structure that allows for efficient matching in
large databases. Comprehensive experiments for both identification and
verification scenarios are performed on two public datasets -- one captured
with a contact-based sensor (PolyU dataset), and the other with a contact-free
sensor (CASIA dataset). Recognition results in various experimental setups show
that the proposed method consistently outperforms existing state-of-the-art
methods. Error rates achieved by our method (0.003% on PolyU and 0.2% on CASIA)
are the lowest reported in literature on both dataset and clearly indicate the
viability of palmprint as a reliable and promising biometric. All source codes
are publicly available.Comment: Preliminary version of this manuscript was published in ICCV 2011. Z.
Khan A. Mian and Y. Hu, "Contour Code: Robust and Efficient Multispectral
Palmprint Encoding for Human Recognition", International Conference on
Computer Vision, 2011. MATLAB Code available:
https://sites.google.com/site/zohaibnet/Home/code
PVSNet: Palm Vein Authentication Siamese Network Trained using Triplet Loss and Adaptive Hard Mining by Learning Enforced Domain Specific Features
Designing an end-to-end deep learning network to match the biometric features
with limited training samples is an extremely challenging task. To address this
problem, we propose a new way to design an end-to-end deep CNN framework i.e.,
PVSNet that works in two major steps: first, an encoder-decoder network is used
to learn generative domain-specific features followed by a Siamese network in
which convolutional layers are pre-trained in an unsupervised fashion as an
autoencoder. The proposed model is trained via triplet loss function that is
adjusted for learning feature embeddings in a way that minimizes the distance
between embedding-pairs from the same subject and maximizes the distance with
those from different subjects, with a margin. In particular, a triplet Siamese
matching network using an adaptive margin based hard negative mining has been
suggested. The hyper-parameters associated with the training strategy, like the
adaptive margin, have been tuned to make the learning more effective on
biometric datasets. In extensive experimentation, the proposed network
outperforms most of the existing deep learning solutions on three type of
typical vein datasets which clearly demonstrates the effectiveness of our
proposed method.Comment: Accepted in 5th IEEE International Conference on Identity, Security
and Behavior Analysis (ISBA), 2019, Hyderabad, Indi
The fundamentals of unimodal palmprint authentication based on a biometric system: A review
Biometric system can be defined as the automated method of identifying or authenticating the identity of a living person based on physiological or behavioral traits. Palmprint biometric-based authentication has gained considerable attention in recent years. Globally, enterprises have been exploring biometric authorization for some time, for the purpose of security, payment processing, law enforcement CCTV systems, and even access to offices, buildings, and gyms via the entry doors. Palmprint biometric system can be divided into unimodal and multimodal. This paper will investigate the biometric system and provide a detailed overview of the palmprint technology with existing recognition approaches. Finally, we introduce a review of previous works based on a unimodal palmprint system using different databases
Fast and efficient palmprint identification of a small sample within a full image.
In some fields like forensic research, experts demand that a found sample of an individual can be matched with its full counterpart contained in a database. The found sample may present several characteristics that make this matching more difficult to perform, such as distortion and, most importantly, a very small size. Several solutions have been presented intending to solve this problem, however, big computational effort is required or low recognition rate is obtained. In this paper, we present a fast, simple, and efficient method to relate a small sample of a partial palmprint to a full one using elemental optimization processes and a voting mechanic. Experimentation shows that our method performs with a higher recognition rate than the state of the art method, when trying to identify palmprint samples with a radius as small as 2.64 cm
Multispectral palmprint recognition based on three descriptors: LBP, Shift LBP, and Multi Shift LBP with LDA classifier
Local Binary Patterns (LBP) are extensively used to analyze local texture
features of an image. Several new extensions to LBP-based texture descriptors
have been proposed, focusing on improving noise robustness by using different
coding or thresholding schemes. In this paper we propose three algorithms
(LBP), Shift Local Binary Pattern (SLBP), and Multi Shift Local Binary Pattern
(MSLBP),to extract features for palmprint images that help to obtain the best
unique and characteristic values of an image for identification. The Principal
Component Analysis (PCA) algorithm has been applied to reduce the size of the
extracted feature matrix in random space and in the matching process; the
Linear Discriminant Analysis (LDA) algorithm is used. Several experiments were
conducted on the large multispectral database (blue, green, red, and infrared)
of the University of Hong Kong. As result, distinguished and high results were
obtained where it was proved that, the blue spectrum is superior to all spectra
perfectly
Integrating shape and texture for hand verification
Author name used in this publication: Ajay KumarAuthor name used in this publication: David ZhangRefereed conference paper2004-2005 > Academic research: refereed > Refereed conference paperVersion of RecordPublishe
Composite Fixed-Length Ordered Features for Palmprint Template Protection with Diminished Performance Loss
Palmprint recognition has become more and more popular due to its advantages
over other biometric modalities such as fingerprint, in that it is larger in
area, richer in information and able to work at a distance. However, the issue
of palmprint privacy and security (especially palmprint template protection)
remains under-studied. Among the very few research works, most of them only use
the directional and orientation features of the palmprint with transformation
processing, yielding unsatisfactory protection and identification performance.
Thus, this paper proposes a palmprint template protection-oriented operator
that has a fixed length and is ordered in nature, by fusing point features and
orientation features. Firstly, double orientations are extracted with more
accuracy based on MFRAT. Then key points of SURF are extracted and converted to
be fixed-length and ordered features. Finally, composite features that fuse up
the double orientations and SURF points are transformed using the irreversible
transformation of IOM to generate the revocable palmprint template. Experiments
show that the EER after irreversible transformation on the PolyU and CASIA
databases are 0.17% and 0.19% respectively, and the absolute precision loss is
0.08% and 0.07%, respectively, which proves the advantage of our method
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