使用手部生物识别模式的人员验证系统

J. Roopa, S. Veluchamy
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引用次数: 1

摘要

生物特征识别系统是一种用于个人身份识别的模式识别系统。单模态生物识别技术使用单一的身份证据,如步态、签名等。单峰生物识别技术存在一些缺点(如准确性、性能改进等)。为了克服单模态生物识别的缺点,提出了多模态生物识别技术。多模态生物识别技术使用多种证据,如掌纹、指关节指纹等。本课题提出了一种基于人手指关节内纹和掌纹特征的多模态生物识别系统。手的图像是用数码相机拍摄的。然后进行预处理,得到手掌和指关节的感兴趣区域(ROI)。利用定向梯度直方图(HOG)算法从掌纹区域提取掌纹特征。使用HOG算法是因为它可以在图像中显示局部物体的外观和形状。它也可以用于手的mehandi设计的情况。同样地,从关节处提取特征将使用RIDGELET变换。它给出了脊的有效特征。从掌纹和内指关节纹中提取不同的特征,并采用判别相关分析(DCA)算法对这些特征进行融合。最后由高效分类模块进行决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Person Validation System Using Hand Based Biometric Modalities
Biometric system is useful for a pattern recognition system which makes a personal identification. Unimodal biometrics uses single evidence for identity e.g., gait, signature etc. There are some disadvantages faced by unimodal biometrics (such as accuracy, performance improvement etc.). So multimodal biometrics is proposed to overcome the disadvantages of unimodal biometrics. Multimodal biometrics uses multiple evidences e.g., palm print, knuckle print etc. This project proposes a multimodal biometric identification system based on inner knuckle print and palm print features of the human hand. The hand image is captured using digital camera. It is then pre-processed to get Region of Interest (ROI) of palm and knuckle. Palm print features are extracted from palm region using Histogram of Oriented Gradients (HOG) algorithm. The HOG algorithm is used because it exhibits the local object appearance and shape within an image. Also it can be used in the case of mehandi designs in the hand. Similarly the features from knuckle will be extracted using RIDGELET transform. It gives the efficient features in the ridges. Different features are extracted from palm print and inner knuckle print and these features are combined by using efficient fusion scheme i.e.) Discriminant Correlation Analysis (DCA) algorithm. And the final decision is taken by efficient classification module.
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