DocumentCode
1499723
Title
Feature-level and decision-level fusion of noncoincidently sampled sensors for land mine detection
Author
Gunatilaka, Ajith H. ; Baertlein, Brian A.
Author_Institution
Lucent Technol., Columbus, OH, USA
Volume
23
Issue
6
fYear
2001
fDate
6/1/2001 12:00:00 AM
Firstpage
577
Lastpage
589
Abstract
We present and compare methods for feature-level (predetection) and decision-level (postdetection) fusion of multisensor data. This study emphasizes fusion techniques that are suitable for noncommensurate data sampled at noncoincident points. Decision-level fusion is most convenient for such data, but it is suboptimal in principle, since targets not detected by all sensors will not obtain the full benefits of fusion. A novel algorithm for feature-level fusion of noncommensurate, noncoincidently sampled data is described, in which a model is fitted to the sensor data and the model parameters are used as features. Formulations for both feature-level and decision-level fusion are described, along with some practical simplifications. A closed-form expression is available for feature-level fusion of normally distributed data and this expression is used with simulated data to study requirements for sample position accuracy in multisensor data. The performance of feature-level and decision-level fusion algorithms are compared for experimental data acquired by a metal detector, a ground-penetrating radar, and an infrared camera at a challenging test site containing surrogate mines. It is found that fusion of binary decisions does not perform significantly better than the best available sensor. The performance of feature-level fusion is significantly better than the individual sensors, as is decision-level fusion when detection confidence information is also available (“soft-decision” fusion)
Keywords
buried object detection; sensor fusion; IR camera; closed-form expression; decision-level fusion; feature-level fusion; ground-penetrating radar; infrared camera; land mine detection; metal detector; multisensor data fusion; noncoincidently sampled sensors; noncommensurate data; postdetection fusion; predetection fusion; soft-decision fusion; Chemical sensors; Chemical technology; Ground penetrating radar; Image sensors; Infrared detectors; Infrared image sensors; Landmine detection; Radar detection; Sensor fusion; Sensor phenomena and characterization;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/34.927459
Filename
927459
Link To Document