Maximum likelihood classification of synthetic aperture radar imagery
Abstract
Classification of synthetic aperture radar (SAR) images has important applications in geology, agriculture, and the military. A statistical model for SAR images is reviewed and a maximum likelihood classification algorithm developed for the classification of agricultural fields based on the model. It is first assumed that the target feature information is known a priori. The performance of the algorithm is then evaluated in terms of the probability of incorrect classification. A technique is also presented to extract the needed feature information from a SAR image; then both the feature extraction and the maximum likelihood classification algorithms are tested on a SEASAT-A SAR image.
- Publication:
-
Computer Vision Graphics and Image Processing
- Pub Date:
- December 1985
- Bibcode:
- 1985CVGIP..32..291F
- Keywords:
-
- Classifications;
- Image Analysis;
- Maximum Likelihood Estimates;
- Radar Imagery;
- Synthetic Aperture Radar;
- Edges;
- Gray Scale;
- Radar Resolution;
- Radar Targets;
- Target Recognition;
- Communications and Radar