基于粗糙集和曲线变换的红外图像增强新算法

Jian-Hui Tan, Ao-Chang Pan, Jian Liang, Yong-hui Huang, Xiao-yan Fan, Jan-Jia Pan
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引用次数: 5

摘要

红外图像增强是信息处理领域的研究热点和难点之一。粗糙集理论是解决模糊和不确定性问题的一种新的数学工具。曲波变换是在小波变换的基础上发展起来的,在去噪和信号增强方面有着显著的效果。根据红外图像的特点和人的视觉特性,结合粗糙集理论和曲线变换,提出了一种增强弱红外图像的新算法。该算法首先基于人的视觉属性和噪声条件属性,根据像素梯度值和噪声两个属性将红外图像划分为不同的子图像。然后通过曲波变换对子图像进行增强。实验结果表明,该算法能够取得较好的增强效果,能够满足红外图像增强的实际需要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new algorithm of infrared image enhancement based on rough sets and curvelet transform
Infrared image enhancement is a research focus as well as one of the difficulties in the field of information processing. Rough sets theory is a new mathematical tool to solve the issue of ambiguity and uncertainty. Curvelet transform develops from wavelet transform and has noticeable effect in denoising and signal enhancing. Based on the features of infrared image and human visual properties and combined the rough sets theory and curvelet transform, this paper has put forward a new algorithm to enhance the weak infrared image. Based on human visual properties and noise conditional properties, this algorithm first partitions an infrared image into different sub-images in accordance with two properties: pixel gradient value and noise. Then enhance the sub-images via curvelet transforming. Experiments results have shown that this new algorithm can achieve good enhancing effect and can meet the actual needs of infrared image enhancement.
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