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COMPARISON OF IMAGE ENHANCEMENT TECHNIQUES FOR RAPID PROCESSING OF POST FLOOD IMAGES

机译:图像增强技术的比较快速处理后洪水图像

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Satellite images are widely used for assessing the areal extent of flooded areas. However, presence of clouds and shadow limit the utility of these images. Numerous digital algorithms are available for enhancing such images and highlighting areas of interest. These algorithms range from simple to complex, and the time required to process these images also varies considerably. For disaster response, it is important to select an algorithm that can enhance the quality of the images in relatively short time. This study compared the relative performance of five traditional (Histogram Equalization, Local Histogram Equalization, Contrast Limited Adaptive Histogram Equalization, Gamma Correction, and Linear Contrast Stretch) algorithms for enhancing post-flood satellite images. Flood images with different levels of clouds and shadows were enhanced and output generated were evaluated in terms of processing time and quality as measured by Blind/Reference less Image Spatial Quality Evaluator (BRISQUE), a no-reference image quality metric. Findings from this study will provide valuable information to image analysts for selecting a suitable algorithm for rapidly processing post-flood satellite images.
机译:卫星图像广泛用于评估淹水区域的面积范围。但是,云和阴影的存在限制了这些图像的效用。众多数字算法可用于增强这样的图像并突出引起感兴趣的区域。这些算法范围从简单到复杂,并且处理这些图像所需的时间也很大。对于灾难响应,选择一种算法,可以在相对短的时间内提高图像质量的算法。本研究比较了五种传统的相对性能(直方图均衡,局部直方图均衡,对比有限的自适应直方图均衡,伽马校正和线性对比度拉伸)算法,用于增强洪水后卫星图像。增强了具有不同云和阴影水平的洪水图像,并在通过盲/参考图像空间质量评估器(BRISQUQUE)测量的处理时间和质量方面评估输出的输出,不参考图像质量指标。本研究的调查结果将为图像分析师提供有价值的信息,用于选择合适的算法,以便快速处理洪水后卫星图像。

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