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首页> 外文期刊>Journal of computer sciences >Palmprint Recognition using Feature Level Fusion
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Palmprint Recognition using Feature Level Fusion

机译:使用特征级融合的掌纹识别

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Problem statement: Palmprint based biometric method has gained high impact over the other biometric methods due to its ease of acquisition, reliability and high client acceptance. Multiple feature extraction from image gives higher accuracy of the authentication system. Approach: This study presents the palmprint based identification methodology which uses the Gabor wavelet entropy to extract multiple features existing on the palm print, by using a feature level fusion using Dempster-Shafer theory and are classified using nearest neighbor approach. A feature having the same vector can be grouped together using wavelet transform. A different feature of image using wavelet can be extracted. Some of the features that can be extracted using wavelet entropy consist of contrast, correlation, energy and homogeneity. The features are fused at feature levels. Palmprint matching is then performed by using the nearest neighbor classifier. Results and Conclusion: We selected 100 individuals' left hand palm images; every person is 6 and the total is 600. Later we got every person each palm image as a template (total 100). The remaining 500 were treated as the training samples. The experimental results achieve recognition accuracy of 98.6% and interesting working point with False Acceptance Rate (FAR) of = 0.03% and False Rejection Rate (FRR) of = 1.4% on the publicly available database of The Hong Kong Polytechnic University. Experimental assessment using palmprint image databases clearly validates the efficient recognition performance of the suggested algorithm compared with the conventional palmprint recognition algorithms.
机译:问题陈述:基于掌纹的生物识别方法因其易于获取,可靠性和高客户接受度而比其他生物识别方法产生了很大的影响。从图像中提取多特征可以提高身份验证系统的准确性。方法:本研究提出了一种基于掌纹的识别方法,该方法使用Gabor小波熵通过Dempster-Shafer理论进行特征级融合,提取存在于掌纹上的多个特征,并使用最近邻方法进行分类。可以使用小波变换将具有相同矢量的特征分组在一起。可以提取使用小波的图像的不同特征。可以使用小波熵提取的一些特征包括对比度,相关性,能量和同质性。功能在功能级别融合。然后通过使用最近的邻居分类器执行掌纹匹配。结果与结论:我们选择了100个人的左手掌图像。每个人是6,总数是600。后来,我们得到了每个人每个手掌图像作为模板(总共100个)。剩下的500个被当作训练样本。实验结果在香港理工大学公开数据库上实现了98.6%的识别准确度和有趣的工作点,错误接受率(FAR)= 0.03%,错误拒绝率(FRR)= 1.4%。与传统的掌纹识别算法相比,使用掌纹图像数据库进行的实验评估清楚地验证了所建议算法的有效识别性能。

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