Publication | Closed Access
Analysis and optimization of neural networks for remote sensing
11
Citations
21
References
1994
Year
EngineeringMachine LearningNeural Networks (Machine Learning)Trained Neural NetworkMultilayer PerceptronSocial SciencesPhysic Aware Machine LearningPattern RecognitionSynthetic Aperture RadarSea IceInverse ProblemsComputer ScienceNeural Networks (Computational Neuroscience)Land Cover MapDeep Neural NetworksRemote SensingNeuronal NetworkOptical Remote SensingRemote Sensing Sensor
Abstract A technique for improving the topology of a trained neural network, used for an inversion or classification problem, is presented. The technique models the multilayer perceptron as a power series, which allows us to (1) remove units from the network which are well‐approximated by zero‐degree or first‐degree polynomials, (2) measure the effect of removing a hidden layer, and (3) determine the degree of the overall polynomial discriminant which approximates the network. The smaller, pruned networks can process data faster than can the larger original networks. The network degree is a direct measure of the nonlinearity inherent in the particular inversion or classification problem of interest. Neural networks for inversion of surface scattering parameters and classification of sea ice are analyzed to illustrate the technique.
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