基于梯度引导的轻量化红外图像超分辨率重建

Lightweight Infrared Image Super-Resolution Reconstruction Based on Gradient Guidance

  • 摘要: 现有的图像超分辨率网络大多针对可见光图像,对红外图像超分辨率的研究较少,且大多沿用可见光图像超分辨率。针对红外图像分辨率低、边缘模糊等问题,提出了一种基于梯度引导的红外图像超分辨率重建网络。该网络充分利用低分辨率红外图像中的梯度信息,将梯度图与提取出的特征相融合,使最终生成的高分辨率图像边缘更加清晰、对比度更高。对比实验与消融实验的结果表明,本文方法在红外图像超分辨率重建中优于其他对比方法,生成的高分辨率图像质量更高。

     

    Abstract: Existing image super-resolution networks are mostly designed for visible light images, with relatively fewer studies focusing on infrared image super-resolution, and most of them simply adopt methods from visible light image super-resolution. In response to the low resolution and blurred edges of infrared images, this paper proposes a gradient-guided infrared image super-resolution reconstruction network. The network fully utilizes the gradient information in low-resolution infrared images, fusing the gradient map with the extracted features, resulting in a high-resolution image with clearer edges and higher contrast. The experimental results of the comparative and ablation studies demonstrate that the proposed method in this paper outperforms other comparative methods in infrared image super-resolution reconstruction, generating high-resolution images of higher quality.

     

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