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An application of data fusion to landcover classification of remote sensed imagery: a neural network approach

机译:数据融合在遥感影像土地覆盖分类中的应用:一种神经网络方法

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This paper focuses on the possibilities offered by neural networks applied to multisensor image data processing. The great number of existing and planned instruments for Earth observation (satellites, sensors) highlights the need of specific techniques for processing, and, in particular, for merging, the large amount of data that will be available in future years. Moreover emphasis is given to the importance of fusing data acquired by sensors operating in different regions of the electromagnetic spectrum. Neural networks (NNs) are employed to perform fusion of TM data with SAR data in order to obtain a landcover classification of an agricultural area in the surroundings of Florence (Italy). Two different architectures of NN are presented and employed, the counterpropagation network and the Kohonen map; the results obtained in both cases are reported and discussed.
机译:本文重点介绍了神经网络应用于多传感器图像数据处理的可能性。现有的和计划中的对地观测仪器(卫星,传感器)数量众多,这凸显了对处理(尤其是合并)特定技术的需求,这些技术将在未来几年获得。此外,重点在于融合由在电磁频谱的不同区域中运行的传感器获取的数据的重要性。神经网络(NN)用于将TM数据与SAR数据进行融合,以获得佛罗伦萨(意大利)周围农业地区的土地覆被分类。提出并采用了两种不同的NN体系结构,即反向传播网络和Kohonen映射。报告并讨论了在两种情况下获得的结果。

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