Finger Knuckle Surface Print Verification using Gabor Filter

Mahsa Arab, S. Rashidi
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引用次数: 3

Abstract

The need for reliable user verification methods has increased due to severe security concerns. Hand-based biometrics plays an important role in providing security in real-time environments and are more successful in speed and accuracy. Finger knuckle images can also be used in forensic and criminal verification applications. This paper investigates an approach for personal verification using finger knuckle surface images. In this paper, after applying the pre-processing and noise reduction of finger knuckle images, by using Gabor filter extracting textural features from both proximal and distal phalanx knuckle regions. The textural features obtained from the Gabor filter are combined with the features of the gray-level co-occurrence matrix and finally classified by using K-nearest neighbor classifier and fuzzy K-nearest neighbor classifier. In the finger knuckle images database of 1435 Finger Knuckle print samples from 287 Fingers, we achieved an accuracy of 97.7% with fuzzy K-nearest neighbor classifier.
使用Gabor滤波器的指关节表面指纹验证
由于严重的安全问题,对可靠的用户验证方法的需求增加了。基于手部的生物识别技术在提供实时环境中的安全性方面发挥着重要作用,并且在速度和准确性方面更为成功。指关节图像也可用于法医和刑事验证应用。本文研究了一种基于指关节表面图像的个人验证方法。本文在对指关节图像进行预处理和降噪后,利用Gabor滤波器分别提取指关节近端和远端区域的纹理特征。将Gabor滤波器得到的纹理特征与灰度共生矩阵的特征相结合,最后分别使用k近邻分类器和模糊k近邻分类器进行分类。在287个手指的1435个指关节指纹样本的指关节图像数据库中,我们使用模糊k -最近邻分类器实现了97.7%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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