An Improved Algorithm for Fingerprint Compression Based on Sparse Representation

Sinju P. Elias, P. Mythili
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引用次数: 2

Abstract

An improved algorithm to compress fingerprint images based on sparse representation is proposed. The algorithm includes two parts namely, construction of the dictionary and the compression process. In order to construct the dictionary, recursive least squares dictionary learning algorithm (RLS-DLA) is used. In RLS-DLA, any given fingerprint is divided into small blocks called patches. Then sparse coding is performed on each patch and the dictionary is continuously updated. Each patch is represented as a linear combination of a few columns from the pre-constructed fingerprint dictionary, which leads to compression. To compute a linear expansion of the current patch, orthogonal projection of the patch on the pre-constructed dictionary element is done. Then the representation is quantized and encoded. The results obtained through RLS-DLA shows improvement of 2.98% in PSNR compared to K-singular value decomposition (K-SVD) dictionary learning algorithm.
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基于稀疏表示的指纹压缩改进算法
提出了一种改进的基于稀疏表示的指纹图像压缩算法。该算法包括字典的构造和压缩过程两部分。为了构造字典,使用递归最小二乘字典学习算法(RLS-DLA)。在RLS-DLA中,任何给定的指纹都被划分为称为补丁的小块。然后对每个patch进行稀疏编码,不断更新字典。每个补丁被表示为预构建指纹字典中几列的线性组合,这导致了压缩。为了计算当前patch的线性展开,将patch在预构造的字典元素上进行正交投影。然后对表示进行量化和编码。与k -奇异值分解(K-SVD)字典学习算法相比,RLS-DLA算法的PSNR提高了2.98%。
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