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A fast atom selection method based on the order of initial inner product values for image denoising using sparse representation

机译:基于稀疏表示的基于初始内积值顺序的图像去噪快速原子选择方法

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In sparse representation, each patch of an image is represented as a linear combination of a few atoms, chosen from an overcomplete basis dictionary. The standard sparse representation requires much computation for inner products to select atoms from a dictionary and for pseudoinverse matrix calculation to determine sparse coefficients. Considering future popularization of high-resolution images, this computational complexity must be reduced. In this paper, we propose a fast atom selection method for sparse representation based on the order of the inner product values between an image patch and the atoms in an overcomplete basis dictionary. The proposed method reduces both the number of the inner product to less than 50.0% and the number of coefficient optimization to 37.7% without subjective image quality degradation when compared to the OMP method.
机译:在稀疏表示中,图像的每个面片均表示为从超完备基础字典中选择的几个原子的线性组合。标准稀疏表示需要大量计算,以使内积从字典中选择原子,并需要进行伪逆矩阵计算来确定稀疏系数。考虑到高分辨率图像的未来普及,必须降低这种计算复杂性。在本文中,我们提出了一种基于稀疏表示的图像补丁与原子之间的内积值顺序的稀疏表示的快速原子选择方法。与OMP方法相比,所提出的方法将内部积的数量减少到小于50.0%,系数优化的数量减少到37.7%,而不会造成主观图像质量下降。

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