Autonomous driving is one of the most challenging tasks of the automotive industry. As a subtask, the estimation of driveable and non driveable space is often solved by applying occupancy grids. The information about non driveable space can be used to improve object tracking. This paper presents an approach for object tracking and modelling in an occupancy grid map. Tracking objects on grid cells yields the advantage of a consistent environmental model on the occupancy grid map. We introduce the occupancy grid map as the only information source for the object tracking module. Taking advantage of the Dempster Shafer theory, a dynamic belief of conflicting cells can be estimated. This dynamic belief is then accumulated in a tracked object mod...
Abstract — Evidential grids have recently shown interesting properties for mobile object perception....
One basis for autonomous driving as well as for the evolution of semi-autonomous or driver guiding a...
International audienceThis paper is an extended version of our paper published in Yu, C.; Cherfaoui,...
We propose a method capable of acquiring an occupancy grid map-based representation of the local, st...
International audienceWe present an evolution of traditional occupancy grid algorithm, based on an e...
Abstract — Modeling and tracking the driving environment is a complex problem, due to the heterogene...
International audienceMultiple Object Tracking is an important task for autonomous vehicles. However...
In this contribution, we propose to improve the grid map occupancy estimation method developed so fa...
Abstract—Due to the complex nature of the driving environment, obstacle tracking systems are require...
An occupancy grid map is a common world representation for mobile robotics navigation. Usually, the ...
International audienceAutonomous navigation among humans is, however simple it might seems, a diffic...
Occupancy grid map is a popular tool for representing the surrounding environments of mobile robots/...
We propose an occupancy grid mapping algorithm for mobile robots operating in environments where obj...
Grid map offers a useful representation of the perceived world for mobile robotics navigation. It wi...
Abstract — The Bayesian occupancy filter (BOF) [1] has achieved promising results in the object trac...
Abstract — Evidential grids have recently shown interesting properties for mobile object perception....
One basis for autonomous driving as well as for the evolution of semi-autonomous or driver guiding a...
International audienceThis paper is an extended version of our paper published in Yu, C.; Cherfaoui,...
We propose a method capable of acquiring an occupancy grid map-based representation of the local, st...
International audienceWe present an evolution of traditional occupancy grid algorithm, based on an e...
Abstract — Modeling and tracking the driving environment is a complex problem, due to the heterogene...
International audienceMultiple Object Tracking is an important task for autonomous vehicles. However...
In this contribution, we propose to improve the grid map occupancy estimation method developed so fa...
Abstract—Due to the complex nature of the driving environment, obstacle tracking systems are require...
An occupancy grid map is a common world representation for mobile robotics navigation. Usually, the ...
International audienceAutonomous navigation among humans is, however simple it might seems, a diffic...
Occupancy grid map is a popular tool for representing the surrounding environments of mobile robots/...
We propose an occupancy grid mapping algorithm for mobile robots operating in environments where obj...
Grid map offers a useful representation of the perceived world for mobile robotics navigation. It wi...
Abstract — The Bayesian occupancy filter (BOF) [1] has achieved promising results in the object trac...
Abstract — Evidential grids have recently shown interesting properties for mobile object perception....
One basis for autonomous driving as well as for the evolution of semi-autonomous or driver guiding a...
International audienceThis paper is an extended version of our paper published in Yu, C.; Cherfaoui,...