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Object-based classification of wetland vegetation using very high-resolution unmanned air system imagery

机译:基于对象的湿地植被分类,使用非常高分辨率无人驾驶空气系统图像

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摘要

The purpose of this study is to examine the use of multi-resolution object-based classification methods for the classification of Unmanned Aircraft Systems (UAS) images of wetland vegetation and to compare its performance with pixel-based classification approaches. Three types of classifiers (Support Vector Machine, Artificial Neural Network and Maximum Likelihood) were utilized to classify the object-based images, the original 8-cm UAS images and the down-sampled (30 cm) version of the image. The results of the object-based and two pixel-based classifications were evaluated and compared. Object-based classification produced higher accuracy than pixel-based classifications if the same type of classifier is used. Our results also showed that under the same classification scheme (i.e. object or pixel), the Support Vector Machine classifier performed slightly better than Artificial Neural Network, which often yielded better results than Maximum Likelihood. With an overall accuracy of 70.78%, object-based classification using Support Vector Machine showed the best performance. This study also concludes that while UAS has the potential to provide flexible and feasible solutions for wetland mapping, some issues related to image quality still need to be addressed in order to improve the classification performance.
机译:本研究的目的是研究使用基于多分辨率对象的分类方法来分类湿地植被的无人机系统(UAS)图像,并将其性能与基于像素的分类方法进行比较。利用了三种类型的分类器(支持向量机,人工神经网络和最大可能性)来分类基于对象的图像,原始的8cm UA图像和图像的下采样(30cm)版本。评估基于对象和基于像素的分类的结果的结果。如果使用相同类型的分类器,基于对象的分类比基于像素的分类更高的精度。我们的结果还表明,在相同的分类方案(I.对象或像素)下,支持向量机分类器比人工神经网络略好地执行,这通常会产生比最大可能性更好的结果。总体准确性为70.78%,使用支持向量机的基于对象的分类显示最佳性能。这项研究还得出结论,虽然UAS有可能为湿地映射提供灵活和可行的解决方案,但仍需要解决与图像质量相关的一些问题,以提高分类性能。

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