Mapping stationary objects is essential for autonomous vehicles and many autonomous functions in vehicles. In this contribution the probability hypothesis density (PHD) filter framework is applied to automotive imagery sensor data for constructing such a map, where the main advantages are that it avoids the detection, the data association and the track handling problems in conventional multiple-target tracking, and that it gives a parsimonious representation of the map in contrast to grid based methods. Two original contributions address the inherent complexity issues of the algorithm: First, a data clustering algorithm is suggested to group the components of the PHD into different clusters, which structures the description of the prior and...
The Delft University of Technology intends to aid in the development of autonomous vehicles by build...
In this work, we consider the application of classical statistical inference to the fusion of data f...
Reliable mapping and hazard detection are prerequisites for autonomous navigation for unmanned groun...
Mapping stationary objects is essential for autonomous vehicles and many autonomous functions in veh...
This work is concerned with the problem of multi-sensor multi-target tracking of stationary road sid...
This work is concerned with the problem of multi-sensor multitarget tracking of stationary road side...
This thesis studies the problem of tracking in the setting of an automotive safety system. In partic...
Abstract- In this contribution we apply the proba-bility hypothesis density (PHD) filter algorithm f...
This thesis is concerned with how data from common automotive sensors can be processed and interpret...
This paper presents a probabilistic framework for unmarked roads estimation using radar sensors. The...
Environment perception is an important aspect of modern automated systems. The perception consists o...
This paper presents a Monte Carlo localization algorithm for an autonomous car based on an integrati...
An important requirement for autonomous driving, is to detect correctly static targets and dynamic t...
This paper presents a Monte Carlo localization algorithm for an autonomous car based on an integrati...
This thesis explores data fusion and distributed robotic perception through a series of theoretical ...
The Delft University of Technology intends to aid in the development of autonomous vehicles by build...
In this work, we consider the application of classical statistical inference to the fusion of data f...
Reliable mapping and hazard detection are prerequisites for autonomous navigation for unmanned groun...
Mapping stationary objects is essential for autonomous vehicles and many autonomous functions in veh...
This work is concerned with the problem of multi-sensor multi-target tracking of stationary road sid...
This work is concerned with the problem of multi-sensor multitarget tracking of stationary road side...
This thesis studies the problem of tracking in the setting of an automotive safety system. In partic...
Abstract- In this contribution we apply the proba-bility hypothesis density (PHD) filter algorithm f...
This thesis is concerned with how data from common automotive sensors can be processed and interpret...
This paper presents a probabilistic framework for unmarked roads estimation using radar sensors. The...
Environment perception is an important aspect of modern automated systems. The perception consists o...
This paper presents a Monte Carlo localization algorithm for an autonomous car based on an integrati...
An important requirement for autonomous driving, is to detect correctly static targets and dynamic t...
This paper presents a Monte Carlo localization algorithm for an autonomous car based on an integrati...
This thesis explores data fusion and distributed robotic perception through a series of theoretical ...
The Delft University of Technology intends to aid in the development of autonomous vehicles by build...
In this work, we consider the application of classical statistical inference to the fusion of data f...
Reliable mapping and hazard detection are prerequisites for autonomous navigation for unmanned groun...