红外图像降噪综述

A Review of Infrared Image Denoising

  • 摘要: 红外成像系统组成与成像环境的复杂性,致使红外图像处理时存在多种复杂噪声,严重影响成像质量,因此加强红外图像降噪研究意义重大。本文先描述红外成像系统结构与图像噪声来源,进而从空间域、频率域、空频结合以及深度学习角度,探讨红外图像降噪的传统及改进算法。鉴于深度学习降噪算法在该领域应用广泛且效果出色,文中对其着重探讨。同时,选取经典降噪算法对真实含噪红外图像开展降噪实验以对比性能。实验表明,深度学习降噪算法的效果优于传统算法。

     

    Abstract: The structure of infrared imaging systems and complexity of the imaging environment lead to complex types of noise during infrared image processing, which can seriously affect image quality. This paper first describes the structure of the infrared imaging system and source of image noise, further discussing traditional and improved algorithms for infrared image noise reduction from the perspective of space and frequency domains, air-frequency combination, and deep learning. In this study, we focused on deep learning noise reduction algorithms, in view of their broad application and excellent noise reduction effect. The classical noise reduction algorithm was selected to conduct noise reduction experiments on real noisy infrared images. Experiments show that the deep-learning algorithm surpasses the traditional algorithm in performance.

     

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