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RBF Neural Network Supported Classification of Remote Sensing Images Based on TM/ETM+ in Nanjing

机译:RBF神经网络支持基于TM / ETM +在南京的遥感图像分类

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The classification of remote sensing images is more and more important along with the development of society and economy. According to the defects general classification methods have, such as the accuracy, the efficiency etc, the design of `robust' classification system based on a Gaussian RBF neural Network is used in this article to classify the TM/ETM+ image in Nanjing. The choice of this neural network model is justified by some of its particular properties, i. e., local learning, fast training phase, ability to recognize when an input pattern has fallen into a region of the input space without training data, and capability to provide high classification accuracies on remote sensing images. For appraising the precision of the model in brief, over 1000 examples are chosen in this research, and the result shows that in the whole research area there is obvious improvement (86.6-89.7%) between MLC and this model. Besides, it is also better than the MLP NN model (87.9-89.7%). The result indicates that the model of RBF NN is a good approach for the classification of remote sensing in this area based on TM/ETM+. Of course, there are also many aspects need to be revised and improved in the future research such as the accuracy and for other data source.
机译:随着社会和经济的发展,遥感图像的分类越来越重要。根据缺陷的一般分类方法,如准确性,效率等,基于高斯RBF神经网络的“鲁棒”分类系统的设计,在本文中使用了南京的TM / ETM +图像。这种神经网络模型的选择是由其某些特定属性的合理的,i。即,局部学习,快速训练阶段,识别输入图案的能力在没有训练数据的情况下倒入输入空间的区域,以及在遥感图像上提供高分类精度的能力。为了评估模型的精度简介,在本研究中选择了超过1000个例子,结果表明,在整个研究面积中,MLC与此模型之间存在明显的改进(86.6-89.7%)。此外,它也比MLP NN模型更好(87.9-89.7%)。结果表明,基于TM / ETM +,RBF NN的模型是该区域遥感分类的良好方法。当然,在未来的研究中,还需要修改许多方面并改善,例如准确性和其他数据源。

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