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Remote sensing image classification based on RBF neural network based on fuzzy C-means clustering algorithm

机译:基于模糊C型群体聚类算法的RBF神经网络的遥感图像分类

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摘要

With the development of modern remote sensing technology, remote sensing images have become one of the powerful tools for people to understand the Earth and its surroundings. However, there is currently no good classification algorithm that can accurately classify images. In order to accurately classify remote sensing images, this paper studies the content of the article by using fuzzy C-means clustering algorithm and radial basis neural network (RBF). The classification accuracy of SIRI-WHU dataset was analyzed by using the classification accuracy evaluation index such as overall accuracy and Kappa coefficient. The Kappa coefficient of vegetation classification in SIRI-WHU dataset was 0.9678, and the overall accuracy reached 97.18%. According to the classification problem of remote sensing image, according to the characteristics of remote sensing image, the improved model Alex Net-10-FCM is used to classify the remote sensing image dataset, and very high classification accuracy is obtained.
机译:随着现代遥感技术的发展,遥感图像已成为人们了解地球及其周围环境的强大工具之一。但是,目前没有良好的分类算法可以准确地分类图像。为了准确地分类遥感图像,本文通过使用模糊C-Means聚类算法和径向基神经网络(RBF)研究了物品的内容。通过使用诸如总体精度和κ系数的分类精度评估指数来分析Siri-WHU数据集的分类准确性。 Siri-Whu DataSet中的植被分类的Kappa系数为0.9678,整体准确性达到97.18%。根据遥感图像的分类问题,根据遥感图像的特性,改进的型号Alex Net-10-FCM用于对遥感图像数据集进行分类,并且获得了非常高的分类精度。

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