TY - JOUR
T1 - How can data fusion help humanitarian mine action?
AU - Milisavljević, Nada
AU - Bloch, Isabelle
PY - 2010/6
Y1 - 2010/6
N2 - In this article, we present our views regarding multi-sensor data fusion potentials to help two types of humanitarian mine action: Close-in detection and mined area reduction. Several approaches are discussed, reflecting our thoughts and experience in this extremely sensitive field of application. For close-in detection, our work on modelling and fusion of extracted features is based on two main methods, one related to the belief function theory and the other one to the possibility theory. The approaches are tested using real data coming from three complementary sensors (ground-penetrating radar, infrared sensor, and metal detector), collected within the Dutch HOM-2000 project. These results are obtained within two Belgian humanitarian demining projects, HUmanitarian DEMining (HUDEM) and Belgian Mine Action Technology (BEMAT). In the case of mined area reduction, our multi-sensor data fusion methods are based on the belief function theory and on the fuzzy logic and applied to real data of synthetic-aperture radar and multi-spectral sensors, gathered within the EU project on Space and Airborne Mined Area Reduction Tools (SMART). The importance of including various knowledge sources is discussed too.
AB - In this article, we present our views regarding multi-sensor data fusion potentials to help two types of humanitarian mine action: Close-in detection and mined area reduction. Several approaches are discussed, reflecting our thoughts and experience in this extremely sensitive field of application. For close-in detection, our work on modelling and fusion of extracted features is based on two main methods, one related to the belief function theory and the other one to the possibility theory. The approaches are tested using real data coming from three complementary sensors (ground-penetrating radar, infrared sensor, and metal detector), collected within the Dutch HOM-2000 project. These results are obtained within two Belgian humanitarian demining projects, HUmanitarian DEMining (HUDEM) and Belgian Mine Action Technology (BEMAT). In the case of mined area reduction, our multi-sensor data fusion methods are based on the belief function theory and on the fuzzy logic and applied to real data of synthetic-aperture radar and multi-spectral sensors, gathered within the EU project on Space and Airborne Mined Area Reduction Tools (SMART). The importance of including various knowledge sources is discussed too.
KW - Close-in detection
KW - Humanitarian mine action
KW - Mined area reduction
KW - Multi-sensor data fusion
UR - http://www.scopus.com/inward/record.url?scp=79958737865&partnerID=8YFLogxK
U2 - 10.1080/19479830903562066
DO - 10.1080/19479830903562066
M3 - Article
AN - SCOPUS:79958737865
SN - 1947-9832
VL - 1
SP - 177
EP - 191
JO - International Journal of Image and Data Fusion
JF - International Journal of Image and Data Fusion
IS - 2
ER -