Automatic vehicle detection in infrared imagery using a fuzzy inference-based classification system | IEEE Journals & Magazine | IEEE Xplore

Automatic vehicle detection in infrared imagery using a fuzzy inference-based classification system


Abstract:

This paper describes a unique approach of using a fuzzy inference system for target detection and classification. It first describes the methods that are used to identify...Show More

Abstract:

This paper describes a unique approach of using a fuzzy inference system for target detection and classification. It first describes the methods that are used to identify regions of interest within each frame of the infrared imagery. Next, the specific data features that are extracted from these regions of interest are described. The fuzzy inference system used in this application is described. This description includes discussions of the feature input and system output membership functions, the rules used in the inference system, and the logical operations, implication, aggregation and defuzzification methods employed. Finally, results attained by applying the described approach to a "blind" closing sequence data set are provided and conclusions are drawn. The developed techniques have proved to be robust and have demonstrated an ability to properly classify a variety of targets in different clutter environments. The described approach can easily be expanded to utilize other feature inputs.
Published in: IEEE Transactions on Fuzzy Systems ( Volume: 9, Issue: 1, February 2001)
Page(s): 53 - 61
Date of Publication: 07 August 2002

ISSN Information:

References is not available for this document.

I. Introduction

INFRARED sensors have been used in missiles and other systems for the detection and classification of tanks and other vehicles. The sensors exploit a combination of temperature differences, emissivity differences, and “cold sky” reflections that in combination result in imagery with a high contrast between the tank or other vehicle target and background clutter. In many cases this contrast is superior to that which would be attained in visible imagery. Closing sequence infrared imagery refers to image data collected using infrared sensors mounted on a missile. The closing sequence is a series of infrared images that are collected as the missile approaches and eventually encounters its intended target. For some years it has been desired to automatically detect and classify tanks and other vehicles in closing sequence data with an overall desire to develop air to ground missile systems with a fire and forget capability.

Select All
1.
J. P. Tarel and B. Nozha, "Robust fuzzy clustering for 3D registration", Proc. NAFIPS'99, pp. 556-560, 1999-June.
2.
M. Benkhalifa and A. Bensaid, "Text categorization using the semi-supervised fuzzy c-means algorithm", Proc. NAFIPS'99, pp. 561-565, 1999-June.
3.
B. Lazzerini and F. Marcelloni, "Fuzzy classification of handwritten characters", Proc. NAFIPS'99, pp. 566-570, 1999-June.
4.
E. L. Walker, "Combining geometric invariants with fuzzy clustering for object recognition", Proc. NAFIPS'99, pp. 571-574, 1999-June.
5.
H. Frigui, P. D. Gader and J. M. Keller, "Fuzzy clustering for landmine detection", Proc. NAFIPS'98, pp. 261-265, 1998-Aug.
6.
P. D. Gader, J. M. Keller, H. Liu and D. Wang, "Landmine detection using fuzzy sets with GPR images", Proc. IEEE Int. Conf. Fuzzy Systems, 1998-May.
7.
P. D. Gader, H. Frigui, B. N. Nelson, G. Vaillette and J. M. Keller, "New results in fuzzy-set-based detection of land mines with GPR", Proc. SPIE Aerosense 1999 Detection and Remediation Technologies for Mines and Minelike Targets IV, vol. 3710, pp. 1075-1084, 1999-Apr.
8.
S.-B. Cho and J. Kim, "Combining multiple neural networks by fuzzy integral for robust classification", IEEE Trans. Syst. Man Cybern., vol. 25, pp. 380-384, 1995.
9.
J. Cao, M. Shridhar and J. M. Keller, "Fusion classifiers with fuzzy integrals", Proc. Int. Conf. Document Analysis and Recognition, pp. 108-111, 1995.
10.
M. Grabish and M. Sugeno, "Multi-attribute classification using fuzzy integral", Proc. 1st IEEE Conf. Fuzzy Syst., pp. 47-54, 1992.
11.
P. D. Gader, M. Mohamed and J. Keller, "Fusion of handwritten word classifiers", Pattern Recog. Lett.̵Special Issue Fuzzy Pattern Recognition, vol. 17, no. 6, pp. 577-584, May 1996.
12.
P. D. Gader, M. Mohamed and J. M. Keller, "Fusion of handwritten word classifiers", Pattern Recogn. Lett., vol. 17, no. 6, pp. 577-584, 1996.
13.
H. Tahani and J. M. Keller, "Information fusion in computer vision using the fuzzy integral", IEEE Trans. Systems Man Cybern., vol. 20, pp. 733-741, 1990.
14.
J. M. Keller, P. D. Gader, H. Tahani, J.-H. Chiang and M. Mohamed, "Advances in fuzzy integration for pattern recognition", Fuzzy Sets Syst.̵Special Issue Pattern Recogn., vol. 65, pp. 273-283, 1994.
15.
C. Ganesh, "Fuzzy logic-based information processing in submarine combat systems", Proc. NAFIPS'99, pp. 153-157, 1999-June.
16.
B. N. Nelson, P. D. Gader and J. M. Keller, "Fuzzy set information fusion in land mine detection", Proc. SPIE Aerosense 1999 Detection and Remediation Technologies for Mines and Minelike Targets IV, vol. 3710, pp. 1168-1178, 1999-Apr.
17.
P. D. Gader, B. N. Nelson, H. Frigui, G. Vaillette and J. M. Keller, "Fuzzy logic detection of landmines with ground penetrating radar", Signal Processing Special Issue on Fuzzy Logic in Signal Processing (Invited Paper), 1999.
18.
B. N. Nelson, "A forward looking infrared sensor for landmine detection that incorporates a novel method of identifying regions of interest and a fuzzy inference system", Proc. NAFIPS'99, pp. 408-412, 1999-June.
Contact IEEE to Subscribe

References

References is not available for this document.