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Palm Vein Recognition System Based on Derived Pattern and Feature Vectors

机译:基于派生模式和特征向量的棕榈静脉识别系统

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摘要

Biometrics is a technology for recognition under which Palm vein recognition stems. They are of crucial importance in various applications of high sensitivity. This article develops a palm vein recognition model, based on derived pattern and feature vectors. All the palm print images used in this work were obtained from CASIA Multi-Spectral Palmprint Image Database V1.0 (CASIA database). First, a Region of Interest (ROI) was identified and extracted from the palm print images. Next, Histogram Equalization was used to enhance the area of the palm print image in the Region of Interest. The enhanced image obtained was subjected to the Zhang Suen's Thinning Algorithm to extract appropriate features in the palm print images needed for authentication. The features derived based on this vascular pattern thinning algorithm which are then compared and evaluated to carry out 'matching'. The Pattern Matching itself was done using the Euclidean Distance for subsequent matching. The model was designed using UML, and implemented with C# and MS SQL on Microsoft Visual Studio platform. The developed system was evaluated based on False Acceptance, False Rejection and Equal Error Rate (EER) values obtained from the system. The results of testing and evaluation show that the developed system has achieved high recognition accuracy.
机译:生物识别技术是一种识别技术,在此技术下,掌状静脉识别就开始了。它们在高灵敏度的各种应用中至关重要。本文基于派生的模式和特征向量,开发了一种掌静脉识别模型。本工作中使用的所有掌纹图像均来自CASIA多光谱掌纹图像数据库V1.0(CASIA数据库)。首先,确定感兴趣区域(ROI)并从掌纹图像中提取。接下来,使用直方图均衡化来增强掌纹图像在感兴趣区域中的面积。获得的增强图像经过Zhang Suen的细化算法,以提取认证所需的掌纹图像中的适当特征。基于此血管模式细化算法得出的特征,然后进行比较和评估以进行“匹配”。模式匹配本身使用欧几里德距离进行后续匹配。该模型使用UML设计,并在Microsoft Visual Studio平台上使用C#和MS SQL实施。根据从系统获得的错误接受,错误拒绝和均等错误率(EER)值对开发的系统进行评估。测试和评估结果表明,所开发的系统具有较高的识别精度。

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