基于局部学习的图像超分辨率

Xiaoqiang Lu, Haoliang Yuan, Yuan Yuan, Pingkun Yan, Luoqing Li, Xuelong Li
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引用次数: 10

摘要

局部学习算法在单帧超分辨率重建算法中得到了广泛的应用,如邻居嵌入算法[1]和局部保持约束算法[2]。邻域嵌入算法基于流形假设,定义嵌入的邻域补丁包含在单个流形中。然而多方面的假设并不总是成立。本文提出了一种基于核脊回归的局部学习图像单帧SR重建算法。首先,采用Gabor滤波器提取低分辨率斑块的纹理信息作为特征;其次,每个输入的低分辨率特征patch利用K近邻算法生成一个局部结构。最后,利用KRR学习从输入的低分辨率(LR)特征补丁到相应局部结构的高分辨率(HR)特征补丁的映射。实验结果表明了该方法的有效性。
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Local learning-based image super-resolution
Local learning algorithm has been widely used in single-frame super-resolution reconstruction algorithm, such as neighbor embedding algorithm [1] and locality preserving constraints algorithm [2]. Neighbor embedding algorithm is based on manifold assumption, which defines that the embedded neighbor patches are contained in a single manifold. While manifold assumption does not always hold. In this paper, we present a novel local learning-based image single-frame SR reconstruction algorithm with kernel ridge regression (KRR). Firstly, Gabor filter is adopted to extract texture information from low-resolution patches as the feature. Secondly, each input low-resolution feature patch utilizes K nearest neighbor algorithm to generate a local structure. Finally, KRR is employed to learn a map from input low-resolution (LR) feature patches to high-resolution (HR) feature patches in the corresponding local structure. Experimental results show the effectiveness of our method.
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