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A novel gamma correction approach using optimally clipped sub-equalization for dark image enhancement

机译:一种新的伽马校正方法,使用对暗图像增强的最佳剪裁子均衡

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In this paper, an efficient statistical approach employing a highly adaptive gamma correction based on adaptively clipped and locally equalized histogram using mean-median statistical pair, is presented for the enhancement of low contrast dark images without losing their intrinsic features. For this purpose, linearly stretched intensity range segmentation, first based on median and mean distribution sub-histograms are derived for local equalization after optimal clipping. Later on, non-linear transformational mapping has been imposed by suitable gamma-correction using the required gamma value-set, which itself is derived by cumulative distribution of the intensity values in adaptively equalized histogram. The proposed methodology clearly outperforms the other state-of-the-art methods in terms of complexity as well as quantitative and qualitative performance; and hence, can be appreciably used for a wide and dynamic range of image-database belonging to various domains ranging from biomedical images to remotely sensed satellite images.
机译:本文在使用平均值统计对的基于自适应剪辑和局部均等的直方图的基于自适应夹持和局部均等的直方图的高效统计方法被呈现用于低对比度暗图像的增强而不失去其内在特征。为此目的,线性拉伸强度范围分割,首先是基于中值和平均分布子直方图来导出在最佳剪裁后的局部均衡。稍后,使用所需的伽马值设置,通过合适的伽马校正施加非线性变换映射,该伽马值集合是通过自适应均衡直方图中的强度值的累积分布来源的。该方法在复杂性以及定量和定性表现方面显然优于其他最先进的方法;因此,可以明显地用于属于从生物医学图像到远程感测卫星图像的各种域的广泛和动态的图像数据库范围。

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