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Improving image classification in a complex wetland ecosystem through image fusion techniques

机译:通过图像融合技术改善复杂湿地生态系统中的图像分类

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The aim of this study was to evaluate the impact of image fusion techniques on vegetation classification accuracies in a complex wetland system. Fusion of panchromatic (PAN) and multispectral (MS) Quickbird satellite imagery was undertaken using four image fusion techniques: Brovey, hue-saturation-value (HSV), principal components (PC), and Gram-Schmidt (GS) spectral sharpening. These four fusion techniques were compared in terms of their mapping accuracy to a normal MS image using maximum-likelihood classification (MLC) and support vector machine (SVM) methods. Gram-Schmidt fusion technique yielded the highest overall accuracy and kappa value with both MLC (67.5% and 0.63, respectively) and SVM methods (73.3% and 0.68, respectively). This compared favorably with the accuracies achieved using the MS image. Overall, improvements of 4.1%, 3.6%, 5.8%, 5.4%, and 7.2% in overall accuracies were obtained in case of SVM over MLC for Brovey, HSV, GS, PC, and MS images, respectively. Visual and statistical analyses of the fused images showed that the Gram-Schmidt spectral sharpening technique preserved spectral quality much better than the principal component, Brovey, and HSV fused images. Other factors, such as the growth stage of species and the presence of extensive background water in many parts of the study area, had an impact on classification accuracies. (C) The Authors.
机译:这项研究的目的是评估图像融合技术对复杂湿地系统中植被分类精度的影响。使用四种图像融合技术进行了全色(PAN)和多光谱(MS)Quickbird卫星图像的融合:Brovey,色相饱和度值(HSV),主成分(PC)和Gram-Schmidt(GS)光谱锐化。使用最大似然分类(MLC)和支持向量机(SVM)方法,将这四种融合技术的映射精度与正常MS图像进行了比较。使用MLC(分别为67.5%和0.63)和SVM方法(分别为73.3%和0.68)时,Gram-Schmidt融合技术产生了最高的总体准确性和kappa值。这与使用MS图像获得的精度相比具有优势。总体而言,在SVM优于MLC的情况下,对于Brovey,HSV,GS,PC和MS图像,总体准确率分别提高了4.1%,3.6%,5.8%,5.4%和7.2%。融合图像的视觉和统计分析表明,Gram-Schmidt光谱锐化技术保留的光谱质量比主成分,Brovey和HSV融合图像要好得多。其他因素,例如物种的生长阶段和研究区域许多地方是否存在大量背景水,都对分类准确性产生了影响。 (C)作者。

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