Palm vein recognition based on competitive code and DPL

Xiyu Wang, Hengjian Li, Jian Qiu, Changzhi Yu
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引用次数: 4

Abstract

Dictionary learning is essentially a dimensionality reduction representation of large data sets and always attempts to learn the most pristine features behind the sample. In this paper, the palm vein feature is extracted with the Competitive code, then the Competition code feature of the palm vein is learned by a novel projective Dictionary Pair Learning (DPL) model for pattern classification tasks. Different from conventional Dictionary Learning (DL) methods, which learn a single synthesis dictionary, DPL learns jointly a synthesis dictionary and an analysis dictionary. Such a pair of dictionaries work together to perform representation and discrimination simultaneously. Compared with previous DL methods, DPL employs projective coding, which largely reduces the computational burden in learning and testing. The Competition code is used to extract the direction information of the palm vein. The above two methods are comprehensively applied to the palm veins. This paper uses the multispectral near-infrared palm vein image database of Hong Kong Polytech University for testing. Compared with the palm vein Competition code classification, the recognition rate of the palm vein Competition code feature learned by DPL is improved in some degree. When the palm vein features are extracted with filters in six different directions, the recognition rate of the palm vein Competitive code feature after learning with DPL is increased to 98.96%.
基于竞争代码和DPL的手掌静脉识别
字典学习本质上是大型数据集的降维表示,总是试图学习样本背后最原始的特征。本文首先利用竞争码提取手掌静脉特征,然后利用一种新的投影字典对学习(DPL)模型学习手掌静脉的竞争码特征,用于模式分类任务。与传统的字典学习(DL)方法学习单个合成字典不同,DPL方法同时学习一个合成字典和一个分析字典。这样一对词典一起工作,同时进行表示和区分。与以往的深度学习方法相比,DPL采用了投影编码,大大减少了学习和测试的计算量。竞赛代码用于提取掌静脉的方向信息。以上两种方法综合应用于掌纹。本文使用香港理工大学多光谱近红外手掌静脉图像数据库进行测试。与掌静脉竞争码分类相比,DPL对掌静脉竞争码特征的识别率有一定提高。用六个不同方向的滤波器提取掌静脉特征时,用DPL学习后掌静脉竞争码特征的识别率提高到98.96%。
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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