基于分层和协同稀疏表示的图像超分辨率

Xianming Liu, Deming Zhai, Debin Zhao, Wen Gao
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引用次数: 13

摘要

本文提出了一种基于分层协同稀疏表示(HCSR)的高效图像超分辨算法。基于自然图像具有多模态统计特征的特点,本文提出了一种分层稀疏编码模型,该模型包括两层:第一层对单个patch进行编码,第二层对属于同一图像空间同质子集的patch集合进行联合编码。我们进一步提出了一种简单的替代方案,通过识别适合特定图像统计的最佳稀疏表示来实现这一目标。特别地,我们将来自离线训练集的图像聚类到具有相似几何结构的区域中,并通过主成分分析(PCA)学习自适应基来描述每个区域(聚类)内的斑块,从而对每个区域(聚类)进行建模。然后利用这个特定于聚类的字典,利用协作稀疏编码的思想来优化估计潜在的HR像素值,其中进一步考虑了同一聚类中补丁之间的相似性。它在概念上和计算上弥补了许多基于标准稀疏编码的现有算法的局限性,其中补丁是独立编码的。实验结果表明,所提出的方法与最先进的算法相比具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Super-Resolution via Hierarchical and Collaborative Sparse Representation
In this paper, we propose an efficient image super-resolution algorithm based on hierarchical and collaborative sparse representation (HCSR). Motivated by the observation that natural images typically exhibit multi-modal statistics, we propose a hierarchical sparse coding model which includes two layers: the first layer encodes individual patches, and the second layer jointly encodes the set of patches that belong to the same homogeneous subset of image space. We further present a simple alternative to achieve such target by identifying optimal sparse representation that is adaptive to specific statistics of images. Specially, we cluster images from the offline training set into regions of similar geometric structure, and model each region (cluster) by learning adaptive bases describing the patches within that cluster using principal component analysis (PCA). This cluster-specific dictionary is then exploited to optimally estimate the underlying HR pixel values using the idea of collaborative sparse coding, in which the similarity between patches in the same cluster is further considered. It conceptually and computationally remedies the limitation of many existing algorithms based on standard sparse coding, in which patches are independently encoded. Experimental results demonstrate the proposed method appears to be competitive with state-of-the-art algorithms.
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