基于融合高频信息的红外图像超分辨率算法

Super-resolution Algorithm of Infrared Imaging Based on Fusing High-Frequency Information

  • 摘要: 针对目前红外热像仪测温精度不足以及分辨率较低的问题,提出了一种融合高频滤波块的温度超分辨率模型EDHFC(Enhanced Detail High-Frequency Component)。该模型首先通过卷积层提取特征图的浅层特征。其次引入高频滤波块突出高频信息,再使用跳跃连接将原始数据与高频信息结合。最后,使用卷积和像素重排上采样温度数据,从而提高分辨率。本实验在自建数据集上进行,实验结果表明,与FSRCNN和EDSR模型相比,EDHFC模型的综合性能最优。

     

    Abstract: To address the problems of insufficient temperature measurement accuracy and low resolution of current thermal imaging cameras, a temperature super-resolution model with an enhanced detail high-frequency component is developed by integrating a high-frequency filter block. The model first extracts the shallow features of a feature map through a convolutional layer. Second, a high-frequency filter block is introduced to highlight the high-frequency information, and jump joins are used to combine the raw data with high-frequency information. Finally, the temperature data are upsampled via convolution and pixel rearrangement, thus improving the resolution. This experiment is conducted on a self-constructed dataset, and the experimental results show that the enhanced detail high-frequency component model outperforms the fast super-resolution convolutional neural network and enhanced deep super-resolution network models.

     

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