融合 Retinex 及多尺度滤波的红外图像增强算法

Infrared Image Enhancement Algorithm Based on Retinex and Multi-scale Filter

  • 摘要: 针对传统红外探测器所采集的红外图像存在对比度低、高斯白噪声降低图像质量以及细节信息丢失等问题,提出了一种集多尺度滤波、图像细节增强的红外图像目标增强算法。该算法通过改进传统Retinex算法中的模糊方式,即用双边模糊代替高斯模糊,解决了传统Retinex算法中由高斯模糊引起的红外图像细节和边缘信息丢失的问题,同时实现红外图像对比度的增强。在此基础上通过三维块匹配滤波、非局部均值滤波等多尺度滤波及去噪处理后,消除了红外图像对比度过度增强而出现的光晕伪影。通过实验验证了本算法的可行性并由对比实验可知,本文算法更能有效去除红外图像存在的高斯白噪声。实验结果表明,本文算法处理得到的红外目标图像细节信息增强、清晰度好、对比度高,且优于其他图像增强算法。

     

    Abstract: Aiming at the problems of low contrast, Gaussian white noise degradation of image quality and loss of detail information in infrared images collected by traditional infrared detectors, an infrared image target enhancement algorithm integrating multi-scale filtering and image detail enhancement is proposed. The algorithm solves the problem of loss of details and edge information in infrared images caused by Gaussian blur in the traditional Retinex algorithm by improving the blurring method in the traditional Retinex algorithm, i.e., replacing the Gaussian blur with bilateral blur, and at the same time realizes the enhancement of the contrast of infrared images. On this basis, the halo artifacts appearing due to excessive contrast enhancement of infrared images are eliminated by multi-scale filtering and denoising processes such as 3D block matched filtering and non-local mean filtering. The feasibility of this algorithm is verified through experiments and the comparison experiments show that the algorithm in this paper is more effective in removing the Gaussian white noise in infrared images. The experimental results show that the infrared target image obtained by this algorithm has enhanced detail information, good clarity, high contrast, and is better than other image enhancement algorithms.

     

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