Title :
Superresolution mapping using a Hopfield neural network with lidar data
Author :
Nguyen, Minh Q. ; Atkinson, Peter M. ; Lewis, Hugh G.
Author_Institution :
Graduate Sch. of Geogr., Univ. of Southampton, UK
fDate :
7/1/2005 12:00:00 AM
Abstract :
Superresolution mapping is a set of techniques to obtain a subpixel map from land cover proportion images produced by soft classification. Together with the information from the land cover proportion images, supplementary information at the subpixel level can be used to produce more detailed and accurate land cover maps. This research aims to use the elevation data from light detection and ranging (lidar) as an additional source of information for superresolution mapping using the Hopfield neural network (HNN). A new height function was added to the energy function of the HNN for superresolution mapping. The value of the height function was calculated for each subpixel of a certain class based on the Gaussian distribution. A set of simulated data was used to test the new technique. The results suggest that 0.8-m spatial resolution digital surface models can be combined with optical data at 4-m spatial resolution for superresolution mapping.
Keywords :
neural nets; optical radar; remote sensing by laser beam; terrain mapping; Gaussian distribution; Hopfield neural network; elevation data; energy function; height function; land cover maps; land cover proportion images; lidar data; soft classification; subpixel map; superresolution mapping; supplementary information; Constraint optimization; Data mining; Digital elevation models; Energy resolution; Gaussian distribution; Hopfield neural networks; Image resolution; Information resources; Laser radar; Spatial resolution; Data fusion; Hopfield neural network (HNN) optimization; light detection and ranging (LIDAR); superresolution mapping;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2005.851551