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An Efficient Retinal Vessels Biometric Recognition System by Using Multi-Scale Local Binary Pattern Descriptor

机译:通过使用多尺度局部二进制图案描述符,一种有效的视网膜血管生物识别系统

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摘要

Biometric systems are technically used for human recognition by identifying the unique features of an individual. Many security issues are found related to biometric systems such as voice, fingerprints, face, iris, signatures, etc., but the retina is a unique and efficient method to identify valid one. The aim of this paper is provided with an efficient method to recognize someone based on unique retina features. A proposed system based on retinal blood vessel pattern by using multi-scale local binary pattern (MSLBP) and random forest (Bagging tree) as feature extraction and classification. MSLBP is an efficient method to extracted features at six scales perpixel level, earlier work found the deficiency based on simple binary pattern with coverage of small areas and per-pixel level in the surrounding. MSLBP and random forest classifier suggested approach use for improving usability, perceivability, and sensitivity on large scale areas. It is the fastest method to get features accurately in an efficient way at every level of pixels. This method based on deep learning evaluation (criteria) parameter selection that provides more significant influence with sharp feature extraction on large scale areas based on seconds and improves the efficiency of images. MSLBP overcomes the problem of image sizing, pixel levels and efficiently provide accurate results.
机译:通过识别个人的独特功能,生物识别系统技术上是用于人为识别。找到许多安全问题与语音,指纹,面,虹膜,签名等的生物识别系统有关,但视网膜是一种识别有效的方法。本文的目的是提供了一种有效的方法来识别基于独特视网膜特征的人。通过使用多尺度局部二进制图案(MSLBP)和随机林(袋装树)作为特征提取和分类,基于视网膜血管模式的提出的系统。 MSLBP是一种有效的方法,可以在六个尺度上提取特征,六个尺度的百倍级别,早期的工作发现了基于简单二进制模式的缺陷,并在周围的小区域和每个像素级别的覆盖范围。 MSLBP和随机森林分类器建议用于提高大规模领域的可用性,可知性和敏感性的方法。它是在各个级别的像素中以有效的方式准确获得功能的最快方法。该方法基于深度学习评估(标准)参数选择,基于秒的大规模区域对大规模区域的夏普特征提取提供更大的影响,提高了图像的效率。 MSLBP克服了图像大小,像素级别的问题,有效提供了准确的结果。

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