Please use this identifier to cite or link to this item:
http://hdl.handle.net/1893/27931
Appears in Collections: | Computing Science and Mathematics Journal Articles |
Peer Review Status: | Refereed |
Title: | Clustering-Oriented Multiple Convolutional Neural Networks for Single Image Super-Resolution |
Author(s): | Ren, Peng Sun, Wenjian Luo, Chunbo Hussain, Amir |
Keywords: | Clustering Convolutional neural networks Single image super-resolution |
Issue Date: | Feb-2018 |
Date Deposited: | 8-Oct-2018 |
Citation: | Ren P, Sun W, Luo C & Hussain A (2018) Clustering-Oriented Multiple Convolutional Neural Networks for Single Image Super-Resolution. Cognitive Computation, 10 (1), pp. 165-178. https://doi.org/10.1007/s12559-017-9512-2 |
Abstract: | In contrast to the human visual system (HVS) that applies different processing schemes to visual information of different textural categories, most existing deep learning models for image super-resolution tend to exploit an indiscriminate scheme for processing one whole image. Inspired by the human cognitive mechanism, we propose a multiple convolutional neural network framework trained based on different textural clusters of image local patches. To this end, we commence by grouping patches intoKclusters viaK-means, which enables each cluster center to encode image priors of a certain texture category. We then trainKconvolutional neural networks for super-resolution based on theKclusters of patches separately, such that the multiple convolutional neural networks comprehensively capture the patch textural variability. Furthermore, each convolutional neural network characterizes one specific texture category and is used for restoring patches belonging to the cluster. In this way, the texture variation within a whole image is characterized by assigning local patches to their closest cluster centers, and the super-resolution of each local patch is conducted via the convolutional neural network trained by its cluster. Our proposed framework not only exploits the deep learning capability of convolutional neural networks but also adapts them to depict texture diversities for super-resolution. Experimental super-resolution evaluations on benchmark image datasets validate that our framework achieves state-of-the-art performance in terms of peak signal-to-noise ratio and structural similarity. Our multiple convolutional neural network framework provides an enhanced image super-resolution strategy over existing single-mode deep learning models. |
DOI Link: | 10.1007/s12559-017-9512-2 |
Rights: | This is a post-peer-review, pre-copyedit version of an article published in Cognitive Computation. The final authenticated version is available online at: https://doi.org/10.1007/s12559-017-9512-2. |
Files in This Item:
File | Description | Size | Format | |
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ClusteringCNN_Final.pdf | Fulltext - Accepted Version | 3.57 MB | Adobe PDF | View/Open |
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