4.6 Article

A new framework for remote sensing image super-resolution: Sparse representation-based method by processing dictionaries with multi-type features

期刊

JOURNAL OF SYSTEMS ARCHITECTURE
卷 64, 期 -, 页码 63-75

出版社

ELSEVIER
DOI: 10.1016/j.sysarc.2015.11.005

关键词

Super-resolution; Remote sensing images; Dictionary interpreting; Sparse representation

资金

  1. National Natural Science Foundation of China [61271330, 61411140248]
  2. Science and Technology Plan of Sichuan Province [2014GZ0005]
  3. Scientific Research Foundation for the Returned Overseas Chinese Scholars, State Education Ministry
  4. National Science Foundation for Postdoctoral Scientists of China [2014M552357]

向作者/读者索取更多资源

Remote sensing images play an important role in many practical applications, however, due to the physical limitations of remote sensing devices, it is difficult to obtain images at an expecting high resolution level. Acquiring high-resolution(HR) images from the original low-resolution(LR) ones with super-resolution(SR) methods has always been an attractive proposition in embedded systems including various kinds of tablet PC and smart phone. SR methods based on sparse representation have been successfully used in processing remote sensing images, however, they have two major problems in common. First, they use only one type of image features to represent the low resolution(LR) images. However, one single type of features cannot accurately represent an image due to the diverse structures of the image, as a result, artifacts would be produced simultaneously. Second, many dictionary learning methods try to build a universal dictionary with only one single type of features. However, apparently, a dictionary with a single type of features is not enough to capture the different structures of a remote sensing image, without any doubt, the resultant image would turn out to be a poor one. To overcome the problems above, we propose a new framework for remote sensing image super resolution: sparse representation-based SR method by processing dictionaries with multi-type features. First, in order to represent the remote sensing image more accurately, different types of features are extracted from images. Second, to achieve a better performance, various dictionaries with multi-type features are learned to capture the essential structures of the image. Then, it's proposed to adaptively control the weights of the high resolution(HR) patches obtained by different dictionaries. Numerous experiments validate that this proposed framework brings better results in terms of both objective quantitation and visual perception than other compared algorithms. (C) 2015 Elsevier B.V. All rights reserved.

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