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Application of Back Propagation Neural Network in the Classification of High Resolution Remote Sensing Image Take remote sensing image of Beijing for instance

机译:BP神经网络在高分辨率遥感影像分类中的应用

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In recent years, the development of high-resolution remote sensing image extends the visual field of the terrain features. Quickbird and other high-resolution remote sensing image can show more characteristics such as shape, spectral, texture and so on. Back Propagation neural network is widely used in remote sensing image classification in recent years, it is a self-adaptive dynamical system which is widely connected by large amount of neural units, and it bases on distributing store and parallel processing. It study by exercise and had the capacity of integrating the information, synthesis reasoning, and rapid overall processing capacity. It can solve the regular problem arise from remote sensing image processing, therefore, it is widely used in the application of remote sensing. This paper discusses the Back Propagation neural network method in order to improve the high resolution remote sensing image classification precision. By analyzing the principle and learning algorithms of Back Propagation neural network, we utilize the Quickbird imagery of Beijing with high resolution as experimental data and do the research of road and simple building roof, In this paper, the use of remote sensing image processing software Matlab, and then combined with Back Propagation neural network classifier for the high resolution remote sensing images of their pattern recognition.
机译:近年来,高分辨率遥感影像的发展扩展了地形特征的视野。 Quickbird和其他高分辨率遥感影像可以显示更多特征,例如形状,光谱,纹理等。反向传播神经网络近年来在遥感图像分类中得到了广泛的应用,它是一个自适应的动力学系统,它被大量的神经单元广泛地连接在一起,并且基于分布存储和并行处理。它通过锻炼进行学习,具有整合信息,综合推理和快速整体处理能力的能力。它可以解决遥感图像处理中经常出现的问题,因此在遥感应用中得到了广泛的应用。本文讨论了反向传播神经网络方法,以提高高分辨率遥感影像的分类精度。通过对反向传播神经网络的原理和学习算法的分析,我们以高分辨率的北京快鸟图像作为实验数据,对道路和简易建筑物的屋顶进行了研究。本文利用遥感图像处理软件Matlab ,然后结合反向传播神经网络分类器进行高分辨率遥感图像的模式识别。

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