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Super resolution reconstruction of infrared images based on classified dictionary learning

机译:基于分类词典学习的红外图像超分辨率重建

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摘要

Infrared images always suffer from low-resolution problems resulting from limitations of imaging devices. An economical approach to combat this problem involves reconstructing high-resolution images by reasonable methods without updating devices. Inspired by compressed sensing theory, this study presents and demonstrates a Classified Dictionary Learning method to reconstruct high-resolution infrared images. It classifies features of the samples into several reasonable clusters and trained a dictionary pair for each cluster. The optimal pair of dictionaries is chosen for each image reconstruction and therefore, more satisfactory results is achieved without the increase in computational complexity and time cost. Experiments and results demonstrated that it is a viable method for infrared images reconstruction since it improves image resolution and recovers detailed information of targets. (C) 2018 Elsevier B.V. All rights reserved.
机译:红外图像始终受到成像设备的限制导致的低分辨率问题。 对该问题的经济方法涉及通过不更新设备来通过合理的方法重建高分辨率图像。 通过压缩传感理论的启发,本研究提出并展示了重建高分辨率红外图像的分类词典学习方法。 它将样本的特征分为几个合理的群集,并为每个群集培训了字典对。 为每个图像重建选择最佳的字典,因此,在不增加计算复杂性和时间成本的情况下实现了更令人满意的结果。 实验和结果表明它是一种可行的红外图像重建方法,因为它改善了图像分辨率并恢复了目标的详细信息。 (c)2018 Elsevier B.v.保留所有权利。

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