基于稀疏字典和非下采样Contourlet变换的红外图像超分辨率

Kangli Li, Wei Wu, Xiaomin Yang, Yingying Zhang, Binyu Yan, Wei Lu, Gwanggil Jeon
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引用次数: 0

摘要

由于硬件的限制,红外图像存在分辨率低、视觉质量差的问题。红外图像超分辨率(SR)是解决这一问题的良好方法。然而,传统的SR方法存在一些缺陷。首先,训练的字典是非结构化的字典,这可能会导致较差的结果。其次,图像的表示过于简单,无法有效地表示图像。为了解决这些问题,本文首先将稀疏字典引入到红外图像SR中,以获得更好的结果。其次,采用非下采样轮廓let变换(NSCT)对红外图像进行表征。实验结果表明,该方法取得了较好的主观视觉效果和客观评价效果。此外,该方法优于本文的其他方法。
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Infrared Image Super-Resolution by Using Sparse Dictionary and Nonsubsampled Contourlet Transform
Due to the limitation of hardware, Infrared (IR) image has low-resolution (LR) and poor visual quality. Infrared image super-resolution (SR) is a good solution for this problem. However, the conventional SR methods have some drawbacks. Firstly, the trained dictionary is an unstructured dictionary, which may lead to worse results. Secondly, the representation of the image is too simple to effectively represent image. To resolve these problems, in this paper, firstly, the sparse dictionary is introduced into the IR image SR to get better results. Secondly, nonsubsampled contour let transform (NSCT) is employed in the proposed method to obtain a better representation of IR image. The experiment results indicate that the subjective visual effect and objective evaluation are acquired excellent performance in the proposed method. Besides, this method is superior to other methods in the paper.
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