Title :
Classification of multi-spectral remote sensing data with neural networks: a comparative study
Author :
Byrne, W. ; Mastrogiannis, K. ; Meyer, GF
Author_Institution :
Dept. of Comput. Sci., Keele Univ., UK
Abstract :
Satellites or planes generate remote sensing images by simultaneously recording `grey-level´ images for a number of wave-bands. The resulting images are usually processed using statistical classifiers to extract features such as roads, built-up areas, vegetation or water. In the present study two types of neural networks, a multi-layer perceptron (MLP) and a Kohonen learning vector quantization (LVQ) network are tested as pattern classifiers. The results are compared with a nearest neighbour classifier (KNN). The aim of the study is to extract five classes: (1) roads, (2) buildings, (3) vegetation, (4) water and (5) derelict sites from data obtained using multi-spectral images of Stoke-on-Trent with a pixel resolution of roughly 4×4 m. The architecture and learning parameters of each network were optimised for 4005 training pixels selected randomly over the image (891×3989 pixels). Both network types and the statistical classifier were tested on 3552 test patterns. Standard back-propagation was used to train the MLPs while oLVQ1 and LVQ3 training were used for the LVQ networks
Keywords :
backpropagation; Kohonen learning vector quantization; LVQ3 training; Stoke-on-Trent; architecture; backpropagation; built-up area; derelict sites; grey-level images; learning parameters; multilayer perceptron; multispectral remote sensing data; nearest neighbour classifier; neural net; oLVQ1 training; pattern classifiers; roads; statistical classifiers; vegetation; water;
Conference_Titel :
Applications of Neural Networks to Signal Processing (Digest No. 1994/248), IEE Colloquium on
Conference_Location :
London