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Palmprint Recognition Based on Local Fisher Discriminant Analysis

机译:基于局部Fisher判别分析的掌纹识别

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摘要

A new palmprint recognition method based on local Fisher discriminant analysis(LFDA) is proposed. In order to solve the singularity of the eigenvalue equation matrix in small-size-sample cases such as image recognition, image down-sample is first used to reduce the palmprint space dimensionality. The LFDA is applied to extract the low projection vectors. Then the training images and test images are projected onto the projection vectors to get the local palmprint feature vectors. Finally, the cosine distance between two feature vectors is calculated to match palmprint. The new algorithm is tested in PolyU plmprint database. The results show that compared with principal component analysis (PCA), Fisher discriminant analysis (FDA), independent component analysis (ICA), and kernel principal component analysis (KPCA), the recognition rate of the new algorithm is the highest which is 98.95%, and the recognition time is 0.031s, so it meets the real-time system specification.
机译:提出了一种基于局部Fisher判别分析(LFDA)的掌纹识别新方法。为了解决特征值方程矩阵在图像识别等小样本情况下的奇异性,首先使用图像下采样来减小掌纹空间维数。 LFDA用于提取低投影向量。然后将训练图像和测试图像投影到投影向量上以获得局部掌纹特征向量。最后,计算两个特征向量之间的余弦距离以匹配掌纹。新算法已在PolyU plmprint数据库中进行了测试。结果表明,与主成分分析(PCA),Fisher判别分析(FDA),独立成分分析(ICA)和核主成分分析(KPCA)相比,新算法的识别率最高,为98.95%。 ,识别时间为0.031s,符合实时系统规范。

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