Title :
Unsupervised iterative detection of land mines in highly cluttered environments
Author :
Batman, Sinan ; Goutsias, John
Author_Institution :
Eastman Kodak Health Imaging, Allendale, NJ, USA
fDate :
5/1/2003 12:00:00 AM
Abstract :
An unsupervised iterative scheme is proposed for land mine detection in heavily cluttered scenes. This scheme is based on iterating hybrid multispectral filters that consist of a decorrelating linear transform coupled with a nonlinear morphological detector. Detections extracted from the first pass are used to improve results in subsequent iterations. The procedure stops after a predetermined number of iterations. The proposed scheme addresses several weaknesses associated with previous adaptations of morphological approaches to land mine detection. Improvement in detection performance, robustness with respect to clutter inhomogeneities, a completely unsupervised operation, and computational efficiency are the main highlights of the method. Experimental results reveal excellent performance.
Keywords :
clutter; decorrelation; iterative methods; landmine detection; mathematical morphology; transforms; clutter inhomogeneities; coastal battlefield; decorrelating linear transform; detection performance; highly cluttered environments; iterating hybrid multispectral filters; land mines; nonlinear morphological detector; unsupervised iterative detection; unsupervised operation; Algorithm design and analysis; Detectors; Filters; Image analysis; Landmine detection; Layout; Multispectral imaging; Object detection; Reconnaissance; Sea measurements;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2003.812325