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Ear Recognition based on Local Texture Descriptors

机译:基于局部纹理描述符的EAR识别

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摘要

Automated personal identification using unique characteristics of the human ear is emerging as an appealing modality in forensic and biometric domains. This study investigates the use of local texture descriptors for ear recognition, and the effects of the fusions of these descriptors. The study presents an investigation of Local Binary Patterns (LBP) and provides extensions of various local descriptors, namely Local Ternary Patterns (LTP), Local Directional Pattern (LDP) and Directional Ternary Patterns (DTP) to ear recognition. A novel approach is proposed for the fusion of these descriptors, referred to as Fusions of Local Descriptors (FLD). Experiments were performed on the publicly available IIT Delhi databases (IITD-l and IITD-2), consisting of several subjects under varying conditions. The experiments show exceptional results, highly competitive with and in some cases beyond the state-of-the-art. Best recognition rates yielded from the FLD fusing DTP and multi-resolution LBP. This study achieved a recognition rate of 95.88% and 97.44% on IITD-l and IITD-2 respectively.
机译:使用人耳的独特特征自动配置个人识别是在法医和生物识别结构域中的一种吸引人的模态。本研究调查了局部纹理描述符进行耳识别,以及这些描述符的融合的影响。该研究提出了对局部二进制模式(LBP)的研究,并提供各种本地描述符的扩展,即局部三元图案(LTP),局部定向模式(LDP)和定向三元图案(DTP)到EAR识别。提出了一种新颖的方法,用于融合这些描述符,称为本地描述符(FLD)的融合。在公开的IIT DELHI数据库(IITD-L和IITD-2)上进行实验,包括几个不同条件下的若干科目。实验表明,在最先进的情况下,卓越的结果表明,竞争力竞争力,竞争力高。 FLD熔断DTP和多分辨率LBP产生的最佳识别率。本研究分别在IITD-L和IITD-2上实现了95.88%和97.44%的识别率。

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