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Two dimensional autoregressive modeling-based interpolation algorithms for image super-resolution: A comparison study

机译:基于二维自回归建模的图像超分辨率的插值算法:比较研究

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Image interpolation is a key technique of image super-resolution. Four two dimensional (2-D) autoregressive (AR) modeling-based image interpolation algorithms have been reported to have better performance in edge and texture preservation than conventional image polynomial interpolation algorithms. However, there is lack of performance comparison among them. For super-resolution reconstruction quality, this paper is going to fill up the gap by a comparison study on the four 2-D AR modeling-based interpolation methods: novel edge-directed interpolation (NEDI), soft-decision adaptive interpolation (SAI), sparse representation interpolation with nonlocal autoregressive modeling (SR-NARM), and adaptive super-pixel-guided AR modeling (ASARM). Furthermore, the four interpolation algorithms are compared in the light of peak signal to noise ratio, feature similarity index, mean squared error and structural similarity index. From comparative results we observe that ASARM method has relatively better performance than other three methods but is more time-consuming than the NEDI and SAI methods.
机译:图像插值是图像超分辨率的关键技术。据报道,四个二维(2-D)自回归(AR)基于型的基于图像插值算法,以比传统图像多项式插值算法具有更好的边缘和纹理保存性能。但是,它们之间缺乏性能比较。对于超级分辨率的重建质量,本文将通过对基于四个2-D AR建模的插值方法的比较研究来填补差距:新颖的边缘定向插值(NEDI),软判决自适应插值(SAI) ,稀疏表示插值与非本体自回归建模(SR-NARM)和自适应超像素引导AR建模(Asarm)。此外,将四个插值算法鉴于峰值信号到噪声比,特征相似度指数,均方误差和结构相似度指标进行比较。从比较结果,我们观察到Asarm方法的性能比其他三种方法相对较好,但比NEDI和SAI方法更耗时。

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