A new efficient dictionary and its implementation on retinal images

D. Thapa, K. Raahemifar, V. Lakshminarayanan
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引用次数: 7

Abstract

Sparse representation of signals and images using an over-complete basis function (dictionary) has attracted a lot of attention in the literature recently. Atoms of a dictionary are either chosen from a predefined set of functions (e.g. Sine, Cosine or Wavelets), or learned from a training set (KSVD). Recently, a nonlinear (NL) dictionary has been proposed by adding NL functions, such as polynomials, rational, logarithmic, exponential, and phase shifted and higher order cosine functions to the conventional Discrete Cosine Transform (DCT) atoms. In this paper, we present a comprehensive performance comparison of various NL functions that are added to the DCT dictionary. The NL dictionary is also compared with the other known dictionaries such as DCT, Haar and KSVD-based learned dictionary for sparse image reconstruction. In the second part, the NL dictionary is exploited for sparsity based image denoising. Retinal images are used for the analysis.
一种新的高效词典及其在视网膜图像上的实现
利用过完备基函数(字典)对信号和图像进行稀疏表示近年来引起了文献的广泛关注。字典的原子要么从预定义的函数集(例如正弦、余弦或小波)中选择,要么从训练集(KSVD)中学习。最近,一个非线性(NL)字典被提出加入NL函数,如多项式,有理,对数,指数,相移和高阶余弦函数到传统的离散余弦变换(DCT)原子。在本文中,我们对添加到DCT字典中的各种NL函数进行了全面的性能比较。并将NL字典与其他已知字典如DCT、Haar和基于ksvd的学习字典进行了比较,用于稀疏图像重建。在第二部分中,利用自然语言字典进行基于稀疏性的图像去噪。视网膜图像用于分析。
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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