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Biometric Recognition Based on Palm Vein Image Using Learning Vector Quantization

机译:基于学习矢量量化的手掌静脉图像生物识别

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Every human being has its own uniqueness among humans that other good physical form or characteristic trait. Biometrics is the science that can recognize a part of an individual. Therefore, biometric identification is one of the ways that is done to identify the identity of the person. Palm vein biometric is one who lately attracted many researchers and industry because it has several advantages over other physical characteristics such as fingerprint, iris and face. Palm vein has internal features making it difficult undermined, modified and simulated with fake palms. In this study, design and implementation will do a recognition system through the venous vessels. Systems that were built capable of taking images of the Palm veins, detect the presence of venous vessels are then able to tell based on the database. This is done after the process of extraction, processing and manufacturing characteristics against the image of Palm vein vessels. The method used is the phase and learning vector quantization symmetri. Feature extraction using phase symmetri. phase symmetri applied by calculating the amplitude and phase of the signal frequency of the image of the vein which represents detailed information detailed variant of an image of the vein. While learning vector quantization is used for grouping the exclusive result of extraction. This research resulted in the classification with accuracy reaching 94%.
机译:每个人在人类中都有其自身的独特性,即其他良好的身体形态或特征。生物识别技术是可以识别个人一部分的科学。因此,生物特征识别是识别该人身份的方法之一。掌静脉生物特征识别技术最近吸引了许多研究人员和行业,因为它比指纹,虹膜和面部等其他物理特征具有多种优势。手掌静脉具有内部特征,很难用假手掌进行破坏,修改和模拟。在这项研究中,设计和实现将通过静脉血管建立一个识别系统。建立的系统能够拍摄手掌静脉的图像,检测静脉血管的存在,然后能够基于数据库进行判断。这是在针对棕榈静脉血管的图像进行提取,处理和制造特征的过程之后完成的。使用的方法是相位和学习矢量量化对称性。使用相位对称进行特征提取。通过计算表示静脉图像的详细信息的详细信息的静脉图像的信号频率的幅度和相位来施加相位对称性。而学习矢量量化用于对提取的排他性结果进行分组。这项研究导致分类的准确性达到94%。

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