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Ear recognition using local binary patterns: A comparative experimental study

机译:使用局部二进制模式进行耳朵识别:一项对比实验研究

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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. (C) 2018 Elsevier Ltd. All rights reserved.
机译:使用从耳朵图像提取的局部特征的身份识别最近在智能生物识别系统社区中引起了极大的关注。人耳丰富而可靠的信息及其长期稳定的结构,使人耳识别技术成为识别个人和验证其身份的诱人选择。本文考虑使用局部二进制模式(LBP)功能的人耳识别问题。其中,类似于LBP的特征基于以下假设来表征图像纹理的空间结构:该纹理具有图案及其强度(振幅)-两个局部互补的方面。它们的高判别力,对单调灰度变化的不变性和计算效率属性使类似LBP的功能适合于耳朵识别问题。因此,研究了文献中作为特征提取技术引入的几种最近的LBP变体的性能,以确定如何将它们最佳地用于耳朵识别。为此,我们分别对识别和验证方案进行了全面的比较研究。此外,提出了一种传统的LBP算子的新变种,称为平均局部二进制模式(ALBP),并将其在表示耳朵图像纹理方面的能力与其他LBP变种进行了比较。耳朵识别和验证实验在五个公开的受约束和不受约束的基准耳朵数据集中进行,这些数据强调了各种成像条件;分别是德里IIT(I),德里IIT(II),AMI,WPUT和AWE。获得的用于识别和验证的结果表明,在成像条件受限的情况下,当前的LBP纹理描述符是成功的人耳识别系统特征提取候选对象,并且可以实现高达99%的识别率;当失真程度增加时,它们的性能将面临困难。此外,要注意的是,经过测试的LBP变体在耳部识别方面几乎达到了接近的性能。因此,需要进一步研究其他应用程序以验证这种接近的性能。我们认为,本文提出的研究具有重要的见识,可以使研究人员在LBP变异之间进行选择,也可以使以前的研究与将来的工作结合起来,从而在耳朵识别系统中利用类似LBP的功能。 (C)2018 Elsevier Ltd.保留所有权利。

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