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Multispectral classification by a modular neural network architecture

机译:通过模块化神经网络架构进行多光谱分类

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Deals with the application of a modular neural network system to classification of remote sensed data characterized by a high number of spectral bands. The classification task was separated into two phases: (i) unsupervised data compression by a linear propagation network (LPN); (ii) supervised feature classification by a multi layer perceptron (MLP). In this work the unsupervised LPN module has been introduced to speed up the training phase of the MPL module. The performance of the MLP classifier trained, respectively, with the original uncompressed data and with the data preprocessed by the LPN module have been compared in terms of classification accuracy and computation time. The experimental results prove that even though the overall classification accuracy is comparable in both the experiments, the convergence time spent in the MLP training with the compressed data has been significantly reduced.
机译:涉及模块化神经网络系统在以大量光谱带为特征的遥感数据分类中的应用。分类任务分为两个阶段:(i)通过线性传播网络(LPN)进行无监督的数据压缩; (ii)通过多层感知器(MLP)进行监督的特征分类。在这项工作中,引入了无人监督的LPN模块以加快MPL模块的训练阶段。在分类准确性和计算时间方面,分别比较了原始原始数据和LPN模块预处理的MLP分类器的性能。实验结果证明,即使在两个实验中总体分类精度都相当,使用压缩数据进行MLP训练所花费的收敛时间也大大减少了。

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