Title :
Cellular neural network for automated detection of geological lineaments on Radarsat images
Author :
Lepage, Richard ; Rouhana, Rouhana G. ; St.-Onge, B. ; Noumeir, Rita ; Desjardins, Robert
Author_Institution :
Genie Production Autom., Ecole de Technol. Superieure, Montreal, Que., Canada
fDate :
5/1/2000 12:00:00 AM
Abstract :
The analysis of natural linear structures, termed “lineaments” in satellite images, provides important information to the geologist. In the satellite imaging process, important features of the observed tridimensional scene, including geological lineaments, are mapped into the resulting 2D image as sharp radiation variations or edge elements (edgels). Edgels are detected by a first-order differentiation operator and are linked together with those in the vicinity on a basis of orientation continuity. Lineaments are mapped into remotely sensed satellite images as long and continuous quasilinear features and can be described as a connected sequence of edgels whose direction may change gradually along the sequence. Parts of the same lineament can be occluded by geomorphological features and must be linked together, a major drawback with local and small neighborhood detectors. The authors propose a cellular neural network (CNN) architecture to offer a large directional neighborhood to the lineament detection algorithm. The CNN uses a large circular neighborhood coupled with a directional-induced gradient field to link together edgels with similar and continuous orientation. Missing edgels are restored if a surrounding lineament is detected
Keywords :
Earth crust; cellular neural nets; feature extraction; geology; geophysical signal processing; geophysical techniques; radar imaging; remote sensing by radar; spaceborne radar; synthetic aperture radar; tectonics; Radarsat image; automated detection; cellular neural network; continuous orientation; detection algorithm; directional-induced gradient field; edge element; edgel; feature extraction; first-order differentiation operator; geological lineament; geomorphological feature; geophysical measurement technique; land surface; large directional neighborhood; lineament; neural net; radar imaging; radar remote sensing; spaceborne radar; structural geology; tectonics; Cellular neural networks; Detection algorithms; Detectors; Geology; Image analysis; Image edge detection; Image restoration; Information analysis; Layout; Satellites;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on