Laboratoire de Génie Informatique et d’Automatique de l’Artois

Yann LEMERET

Ph.D. student
(Position when this person departed from the LGI2A)
Member of the research themes:

Revue Internationale avec Comité de Lecture

Yann LEMERET -- Eric LEFEVRE -- Daniel JOLLY
Improvement of an association algorithm for obstacle tracking
Information Fusion, pp 234-245, Vol. 9, No. 2, , 04/2008

Conférence Internationale avec Comité de Lecture

2006
International conference with review committee
Yann LEMERET -- Eric LEFEVRE -- Daniel JOLLY
An association algorithm for tracking multiple moving objects
IEEE Intelligent Transportation Systems Conference , ITSC'2006, pp 1334-1339, Canada, 09/2006
2005
International conference with review committee
Yann LEMERET -- Eric LEFEVRE -- Daniel JOLLY
Detection and tracking of moving objects
IEEE sponsored international conference on Artificial Intelligence Systems, Divnomorskoye, Russie, 09/2005
2005
International conference with review committee
Yann LEMERET -- Eric LEFEVRE -- Daniel JOLLY
Tracking cars and prediction of their trajectories
International Conference on Machine Intelligence. IEEE Sponsored, ACIDCA-ICMI'2005, Tozeur, Tunisie, 01/2005
2004
International conference with review committee
Yann LEMERET -- Eric LEFEVRE -- Daniel JOLLY
Evidence theory for data fusion in transportation system
Congrès IFAC DECOM TT-2004 Automatic Systems for Building the Infrastructure in Developing Countries, pp 81-86, 01/2004
2004
International conference with review committee
Yann LEMERET -- Eric LEFEVRE -- Daniel JOLLY
Simulator of obstacle detection and tracking
5th EUROSIM Congress on Modelling and Simulation, EUROSIM'04, 01/2004

Conférence Nationale avec Comité de Lecture

2004
French conference with review committee
Yann LEMERET -- Eric LEFEVRE -- Daniel JOLLY
de données provenant d’un laser et d’un radar en utilisant la théorie de l’évidence
2ème Manifestation de JEunes Chercheurs STIC, MAJESTIC'2004, 01/2004

Author of the Ph.D. thesis "Objects tracking with use of evidence theory for driver assistance systems"

2003 - 2006

This work is a part of the RaViOLi project and is about multi-objects tracking for driver assistance. In this project, the experimental car is fitted with : a radar, a lidar and a stereovision system. A list of detected objects is provided by each sensor including their coordinates given in distance and angle. This information is treated with the belief functions theory which change data in belief masses. Then, a tracking algorithm, also based on belief functions theory, is used to localize again the detected objects in the new objects list provided by the sensors. This association is made by comparing the old objects list to the new one between each sample time, and when an object match in the two lists, it is considered to be the same. An existing tracking algorithm, developed by M. Rombaut, was used and it was modified to fit the constraints of project RaViOLi. A comparison between these two methods of association is shown, as well as their limits and the advantages of the modifications made. Finally, a prediction step is used to predict objects positions at two different times. First, a t + dt second prediction is computed, where dt corresponds to the sampling time of the sensor. This prediction is used as new data in the association step to improve the tracking. Then, a prediction at t + n seconds is done, where n depends of the car speed. Dangerous cars can thus be extracted and an alert can be sent to the driver if necessary. Synthetics and real data are used to test the robustness of the algorithm in several situations.