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Journal ArticleDOI

Ear recognition using local binary patterns: A comparative experimental study

TLDR
The obtained results for both identification and verification indicate that the current LBP texture descriptors are successful feature extraction candidates for ear recognition systems in the case of constrained imaging conditions and can achieve recognition rates reaching up to 99%; while, their performance faces difficulties when the level of distortions increases.
Abstract
Identity recognition using local features extracted from ear images has recently attracted a great deal of attention in the intelligent biometric systems community. The rich and reliable information of the human ear and its stable structure over a long period of time present ear recognition technology as an appealing choice for identifying individuals and verifying their identities. This paper considers the ear recognition problem using local binary patterns (LBP) features. Where, the LBP-like features characterize the spatial structure of the image texture based on the assumption that this texture has a pattern and its strength (amplitude)-two locally complementary aspects. Their high discriminative power, invariance to monotonic gray-scale changes and computational efficiency properties make the LBP-like features suitable for the ear recognition problem. Thus, the performance of several recent LBP variants introduced in the literature as feature extraction techniques is investigated to determine how can they be best utilized for ear recognition. To this end, we carry out a comprehensive comparative study on the identification and verification scenarios separately. Besides, a new variant of the traditional LBP operator named averaged local binary patterns (ALBP) is proposed and its ability in representing texture of ear images is compared with the other LBP variants. The ear identification and verification experiments are extensively conducted on five publicly available constrained and unconstrained benchmark ear datasets stressing various imaging conditions; namely IIT Delhi (I), IIT Delhi (II), AMI, WPUT and AWE. The obtained results for both identification and verification indicate that the current LBP texture descriptors are successful feature extraction candidates for ear recognition systems in the case of constrained imaging conditions and can achieve recognition rates reaching up to 99%; while, their performance faces difficulties when the level of distortions increases. Moreover, it is noted that the tested LBP variants achieve almost close performance on ear recognition. Thus, further studies on other applications are needed to verify this close performance. We believe that the presented study has significant insights and can benefit researchers in choosing between LBP variants as well as acting as a connection between previous studies and future work in utilizing LBP-like features in ear recognition systems.

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Citations
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Journal ArticleDOI

A comprehensive survey on the biometric recognition systems based on physiological and behavioral modalities

TL;DR: A comprehensive and deep survey that compactly and systematically summarizes the literature work done on unimodal and multimodal biometric systems and analyzes the feature extraction techniques, classifiers, datasets, results, efficiency and reliability of the system with high and multi-dimensional perspectives is explicated.
Journal ArticleDOI

An improved feature extraction method using texture analysis with LBP for bearing fault diagnosis

TL;DR: A new approach based on texture analysis is proposed for diagnosing bearing vibration signals and it was observed that the obtained feature had promising results for three different data types and was more successful than the traditional methods.
Journal ArticleDOI

Triple-Classification of Respiratory Sounds Using Optimized S-Transform and Deep Residual Networks

TL;DR: This paper proposes a novel method for the identification of wheeze, crackle, and normal sounds using the optimized S-transform (OST) and deep residual networks (ResNets) and shows that the proposed OST and ResNet is excellent for the multi-classification of respiratory sounds with the accuracy, sensitivity, and specificity.
Journal ArticleDOI

Ensembles of Deep Learning Models and Transfer Learning for Ear Recognition.

TL;DR: A novel system for ear recognition based on ensembles of deep CNN-based models and more specifically the Visual Geometry Group (VGG)-like network architectures for extracting discriminative deep features from ear images with significant improvements over the recently published results.
Journal ArticleDOI

Ear Recognition Based on Deep Unsupervised Active Learning

TL;DR: In this paper, the authors proposed an alternative to this approach: an initial training process called Deep Unsupervised Active Learning, where a classification model can incrementally acquire new knowledge during the testing phase without manual guidance or correction of decision making.
References
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Journal ArticleDOI

Multiresolution gray-scale and rotation invariant texture classification with local binary patterns

TL;DR: A generalized gray-scale and rotation invariant operator presentation that allows for detecting the "uniform" patterns for any quantization of the angular space and for any spatial resolution and presents a method for combining multiple operators for multiresolution analysis.
Journal ArticleDOI

A comparative study of texture measures with classification based on featured distributions

TL;DR: This paper evaluates the performance both of some texture measures which have been successfully used in various applications and of some new promising approaches proposed recently.
Journal ArticleDOI

Face Description with Local Binary Patterns: Application to Face Recognition

TL;DR: This paper presents a novel and efficient facial image representation based on local binary pattern (LBP) texture features that is assessed in the face recognition problem under different challenges.
Journal ArticleDOI

An introduction to biometric recognition

TL;DR: A brief overview of the field of biometrics is given and some of its advantages, disadvantages, strengths, limitations, and related privacy concerns are summarized.
Journal ArticleDOI

A Completed Modeling of Local Binary Pattern Operator for Texture Classification

TL;DR: It is shown that CLBP_S preserves more information of the local structure thanCLBP_M, which explains why the simple LBP operator can extract the texture features reasonably well and can be made for rotation invariant texture classification.
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