CSSIP Header
Home
About CSSIP
Governing Board
GroundProbe
SPIRE Innovations
Wedgetail TRDC
Research
Distributed Sensor & Information Systems
Sensor Signal Processing
Medical Imaging
Image Analysis
Area Surveillance Technology
Education

Short Courses

Free Seminars
Online Masters
Postgrad. Research
Customised Training
Commercialisation
Conferences
Contact Details
Sites
Annual Reports
Vacancies
Privacy Statement
Powered by
 
Established and
supported under the Australian Government's Cooperative Research Centres Program

High Resolution Radar Project

Program Contact: Dr Tristrom Cooke Phone: (08) 8302 5846.

Radar imagery enjoys the advantage of being independent from a passive illumination source, such as sunlight, and thus offers imaging capability at night and through clouds. By utilising synthetic aperture processing methods, modern day radar imaging systems are capable of sub-meter resolution. For defence applications the operational requirement is to employ SAR imagery as an aid in finding small targets, and if possible, classify the detected targets; the requirement is of course an all weather one.

Defence units rely upon a variety of sensor information to locate and track oppositional forces; the surveillance problem becomes difficult over large land masses that are sparsely populated. Modern warfare is dependent upon several types of image data to aid in the surveillance task. These include optical data, infrared data, and radar image data. The volume of image data would overwhelm the available image analysis capabilities unless the imagery is first prescreened to detect potentially significant targets. The detection problem increases in difficulty when the targets are small and the land area is large. Clearly, we desire to maximise the probability of target detection, the probability of correct classification, and to minimise the probability of a false alarm, which are competing goals.

Also studied are Support Vector Machines (SVM's) in the classification of SAR images. SVM's have been shown to perform better than traditional classifiers with real world data in many situations and without the need for the time consuming search of target features to use. CSSIP's research concentrates on the investigation of the different effects of error penalties and then extending the SVM's capabilities to self-select the required error penalties in training.

Previous Projects

JP129 Project Award
Analysts' Detection Support System

Funding for SAR automatic target detection was secured under Defence Project JP129, Airborne Surveillance for Land Operations. CSSIP and DSTO/SSD jointly developed feature extraction/target detection algorithms under a two year contract which commenced in April 1998. The CSSIP project team included Dr. Jim Schroeder as Program Manager, Dr. Jingxin Zhang, Senior Research Fellow, Dr. Tristrom Cooke, Research Fellow, and Dr. Dahong Tang, Research Fellow. Australian defence requirements included use of SAR images for detection of small vehicles in remote regions. The high volume of airborne image data mandated the use of automatic computer-based pre-screening/processing algorithms to relieve ground based analysts of viewing all available imagery.

Feature Extraction for Automatic Target Recognition
RLM Systems, Ltd.
Melbourne, Victoria

For high resolution SAR imagery it is possible to automatically recognise and classify different types of military targets. For example, a tank may be distinguished from a jeep, thus allowing the battlefield commander to refine "On the Ground" decisions for maximum force effectiveness.

CSSIP and RLM undertook a joint study effort to identify critical target features in high resolution complex SAR imagery. Selected features would then be input to a pattern classification algorithm for Automatic Target Recognition.

PUBLICATIONS:

Cooke T and Peake M
The optimal classification using a linear discriminant for two point classes having known mean and covariance, Journal of Multivariate Analysis, Vol.82, No.2, pp 379-394, August 2002.

Cooke T
A note on the classification error of an SVM in one dimension, Proceedings of IDC 2002, Adelaide, Australia, February 2002.

Cooke T
Two variations on Fisher's linear discriminant for pattern recognition, IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol.24, No.2, pp 268-273, February 2002.

Tang D, Schroeder J, Zhang J and Cooke T
A New Approach of Regressionn via Support Vector Machines WoSPA 2000, Brisbane, December 2000.

Schroeder J and Gunawardena A
Speckle reduction in SAR imagery for enhanced automatic target detection,
EURASIP Signal Processing Journal (Special Issue - Defence Signal Processing),
Accepted for special issue, 2000.

Cooke T, Redding N, Schroeder J and Zhang J
Comparison of selected features for target detection in synthetic aperture radar imagery, Digital Signal Processing, Vol.10, No.4, pp 286-296, October 2000.

Cooke T, Redding N, Schroeder J and Zhang J
Target discrimination in complex synthetic aperture radar imagery, Asilomar 2000, Monterey, California, October 2000.

Zhang J, Schroeder J, Redding N, Cooke T and Tang D
Singular value features of images, Proceedings of the SPIE Conference on Visual Communications and Image Processing 2000, Perth, Australia, June 2000, Vol.4067, Pt I, pp.894-903.

Cooke T
A Radon transform derivative method for faint trail detection in SAR imagery, DICTA'99 conference proceedings, pp.31-34, December 1999.

Schroeder J
Multiscale modeling for manmade object discrimination in synthetic aperture radar imagery, Proceedings of the Asilomar Conference on Signals and Systems,
24-27 October, 1999.

Howard D and Schroeder J
Multiscale Models for Target Detection and Background Discrimination in Synthetic Aperture Radar Imagery, Digital Signal Processing: A Review Journal, July, 1999.

Bose, T., Xu, G-F, and Schroeder, J.,
Image Enhancement Using an EDS Adaptive Filter, ISCAS'99, Orlando, Florida, May, 1999.

Schroeder J and Howard D
Multiscale modelling for target detection in complex synthetic aperture radar imagery,
Asilomar'98, Monterey, CA, Nov'98.

Bose T, Campbell E and Schroeder J
A 2-D Switched Mean/Median Filter For Image Restoration
ISPACS'98, Melbourne, Vic, Nov'98.

Gunawardena A and Schroeder J
Polynomial Hough Transform Based Feature Extraction From SAR Imagery,
EUSAR'98, Friedrichshafen, Germany, 25-27 May, 1998, pp. 273-276.


This page was last updated on: October 8, 2004 16:07
Some documents on this site require Acrobat Reader or the Word Viewer,
please click on the links below to download:

Get Acrobat Reader Get Word Viewer