Finger-Print Image Super-Resolution via Gradient Operator based Clustered Coupled Sparse Dictionaries

F. Yeganli, Kuldeep Singh
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Abstract

In this paper, a novel approach is employed for fingerprint image super-resolution based on sparse representation over a set of coupled low and high-resolution dictionary pairs. The primary step of fingerprint super-resolution involves learning a pair of coupled low- and high-resolution sub-dictionaries for each cluster of patches sampled from training set of fingerprint images. The clusters are formulated based on patch sharpness and the dominant phase angle via the magnitude and phase of the gradient operator for each image patch. In the reconstruction stage, for the low-resolution patch the most appropriate dictionary pair is selected, and the sparse coding coefficients are calculated with respect to the low-resolution dictionary. The equality assumption of the sparse representation of the low and high-resolution patches is the link between the low and high-resolution features space. For the reconstruction of high resolution patch, the sparse coefficients calculated for low-resolution patch are directly multiplied with corresponding high-resolution dictionary. The conducted experiments over fingerprint images show that the algorithm is competitive with the state-of-art super-resolution algorithms.
基于梯度算子的聚类耦合稀疏字典指纹图像超分辨率研究
本文提出了一种基于一组低分辨率和高分辨率字典对的稀疏表示的指纹图像超分辨率方法。指纹超分辨率的首要步骤是从指纹图像训练集中采样的每一簇补丁学习一对耦合的低分辨率和高分辨率子字典。该聚类是基于斑块清晰度和通过每个图像斑块的梯度算子的大小和相位的主导相位角制定的。在重建阶段,对低分辨率patch选择最合适的字典对,并相对于低分辨率字典计算稀疏编码系数。低分辨率和高分辨率斑块稀疏表示的等式假设是连接低分辨率和高分辨率特征空间的纽带。对于高分辨率patch的重建,直接将低分辨率patch的稀疏系数与对应的高分辨率字典相乘。在指纹图像上进行的实验表明,该算法与目前最先进的超分辨率算法具有竞争力。
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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