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首页> 外文期刊>International journal of applied earth observation and geoinformation >A new approach for surface water change detection: Integration of pixel level image fusion and image classification techniques
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A new approach for surface water change detection: Integration of pixel level image fusion and image classification techniques

机译:地表水变化检测的新方法:像素级图像融合和图像分类技术的集成

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Normally, to detect surface water changes, water features are extracted individually using multi-temporal satellite data, and then analyzed and compared to detect their changes. This study introduced a new approach for surface water change detection, which is based on integration of pixel level image fusion and image classification techniques. The proposed approach has the advantages of producing a pansharpened multispectral image, simultaneously highlighting the changed areas, as well as providing a high accuracy result. In doing so, various fusion techniques including Modified IHS, High Pass Filter, Gram Schmidt, and Wavelet-PC were investigated to merge the multi-temporal Landsat ETM+ 2000 and TM 2010 images to highlight the changes. The suitability of the resulting fused images for change detection was evaluated using edge detection, visual interpretation, and quantitative analysis methods. Subsequently, artificial neural network (ANN), support vector machine (SVM), and maximum likelihood (ML) classification techniques were applied to extract and map the highlighted changes. Furthermore, the applicability of the proposed approach for surface water change detection was evaluated in comparison with some common change detection methods including image differencing, principal components analysis, and post classification comparison. The results indicate that Lake Urmia lost about one third of its surface area in the period 2000-2010. The results illustrate the effectiveness of the proposed approach, especially Gram Schmidt-ANN and Gram Schmidt-SVM for surface water change detection. (C) 2014 Elsevier B.V. All rights reserved.
机译:通常,要检测地表水的变化,可使用多时相卫星数据分别提取水特征,然后进行分析和比较以检测其变化。这项研究引入了一种新的地表水变化检测方法,该方法基于像素级图像融合和图像分类技术的集成。所提出的方法的优点是可以产生清晰的多光谱图像,同时突出显示变化的区域,并提供高精度的结果。为此,研究了包括融合IHS,高通滤波器,Gram Schmidt和Wavelet-PC在内的各种融合技术,以合并多时态Landsat ETM + 2000和TM 2010图像以突出显示变化。使用边缘检测,视觉解释和定量分析方法评估了所得融合图像是否适合变化检测。随后,人工神经网络(ANN),支持向量机(SVM)和最大似然(ML)分类技术被应用于提取和映射突出显示的变化。此外,与一些常用的变化检测方法(包括图像差异,主成分分析和分类后比较)相比较,评估了该方法在地表水变化检测中的适用性。结果表明,乌尔米亚湖在2000-2010年期间损失了约三分之一的表面积。结果说明了所提出方法的有效性,尤其是Gram Schmidt-ANN和Gram Schmidt-SVM对于地表水变化检测的有效性。 (C)2014 Elsevier B.V.保留所有权利。

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