Image Enhancement Methods for Remote Sensing: A Survey

N. H. Kaplan, I. Erer, D. Kumlu
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引用次数: 3

Abstract

The quality of the images obtained from remote sensing devices is very important for many image processing applications. Most of the enhancement methods are based on histogram modification and transform based methods. Histogram modification based methods aim to modify the histogram of the input image to obtain a more uniform distribution. Transform based methods apply a certain transform to the input image and enhance the image in transform domain followed by the inverse transform. In this work, both histogram modification and transform domain methods have been considered, as well as hybrid methods. Moreover, a new hybrid algorithm is proposed for remote sensing image enhancement. Visual comparisons as well as quantitative comparisons have been carried out for different enhancement methods. For objective comparison quality metrics, namely Contrast Gain, Enhancement Measurement, Discrete Entropy and Average Mean Brightness Error have been used. The comparisons show that, the histogram modification methods have a better contrast improvement, while transform domain methods have a better performance in edge enhancement and color preservation. Moreover, hybrid methods which combine the two former approaches have higher potential.
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遥感图像增强方法综述
从遥感设备获得的图像质量对于许多图像处理应用非常重要。大多数增强方法是基于直方图修改和基于变换的方法。基于直方图修改的方法旨在修改输入图像的直方图,使其分布更加均匀。基于变换的方法对输入图像进行一定的变换,在变换域对图像进行增强,然后进行逆变换。本文考虑了直方图修正和变换域方法,以及混合方法。此外,提出了一种新的混合遥感图像增强算法。对不同的增强方法进行了视觉比较和定量比较。客观比较质量指标,即对比度增益,增强测量,离散熵和平均平均亮度误差被使用。对比结果表明,直方图修正方法具有更好的对比度提升效果,而变换域方法在边缘增强和颜色保持方面具有更好的性能。结合两种方法的混合方法具有更大的潜力。
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