“Feature level fusion of face, palm vein and palm print modalities using Discrete Cosine Transform”

Aditya Gupta, A. Malage, Dhiraj More, Priya M. Hemane, Prayanti P. Bhautmage, Duhita Dhandekar
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引用次数: 9

Abstract

Due to usefulness in recognition and identification biometric systems have become a major part of research. Paper proposes a multimodal biometric system using face modality combined with palm print and palm vein modality. The proposed methodology uses Local Statistical method in which pre-defined block of DCT coefficient were used to calculate standard deviation and store them as feature vector. Matching is done using distance between feature vector of testing and training data set. Results show that the Genuine Acceptance Rate (GAR) of feature level fusion is 100% which is better than, that of uni-modal systems, hence having multimodality is advantageous. For testing and training database of 100 students of College of Engineering Pune.
基于离散余弦变换的人脸、掌纹和掌纹特征级融合
由于生物特征识别系统在识别和身份识别方面的有用性,已成为研究的重要组成部分。本文提出了一种基于人脸模态、手掌纹模态和手掌静脉模态的多模态生物识别系统。该方法采用局部统计方法,利用预先定义好的DCT系数块计算标准差并存储为特征向量。利用测试特征向量与训练数据集之间的距离进行匹配。结果表明,特征级融合的真实接受率(GAR)为100%,优于单模态系统,因此具有多模态是有利的。用于浦那工程学院100名学生的测试和培训数据库。
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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