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.
展开▼