International audienceThe fusion of multi-sensor information for state estimation is a well studied problem in robotics. However, the classical methods may fail to take into account the measurements validity, therefore ruining the benefits of sensor redundancy. This work addresses this problem by learning context-dependent knowledge about sensor reliability. This knowledge is later used as a decision rule in the fusion task in order to dynamically select the most appropriate subset of sensors. For this purpose we use the Mixture of Experts framework. In our application, each expert is a Kalman filter fed by a subset of sensors, and a gating network serves as a mediator between individual filters, basing its decision on sensor inputs and con...
A basic requirement for an autonomous mobile robot is to localize itself with repect to a given coor...
This dissertation proposes a novel method called state-dependent sensor measurement models (SDSMMs)....
We present a system for performing multi-sensor fusion that learns from experience, i.e., from train...
International audienceThe fusion of multi-sensor information for state estimation is a well studied ...
Sensor fusion is a method of integrating signals from multiple sources. It allows extracting informa...
Abstract. In this paper we consider the multisensory convergence problem, that is when signals from ...
Abstract—The exploitation of contextual information can bring several advantages to fusion systems a...
The adoption of multi-sensor data fusion techniques is essential to effectively merge and analyze he...
Autonomous mobile robots usually require a large number of sensor types and sensing modules. There a...
In smart environments, a multi-robot system is difficult to achieve a high confidence level of infor...
Abstract- The problem of decision fusion has been studied for distributed sensor systems in the past...
peer reviewedRobots have to be able to function in a multitude of different situations and environme...
Multi-sensor data fusion is extensively used to merge data collected by heterogeneous sensors deploy...
Autonomous systems, particularly unmanned aerial systems (UAS), remain limited in autonomous capabil...
In order to get the modularity and reconfigurability for sensor information fusion services in moder...
A basic requirement for an autonomous mobile robot is to localize itself with repect to a given coor...
This dissertation proposes a novel method called state-dependent sensor measurement models (SDSMMs)....
We present a system for performing multi-sensor fusion that learns from experience, i.e., from train...
International audienceThe fusion of multi-sensor information for state estimation is a well studied ...
Sensor fusion is a method of integrating signals from multiple sources. It allows extracting informa...
Abstract. In this paper we consider the multisensory convergence problem, that is when signals from ...
Abstract—The exploitation of contextual information can bring several advantages to fusion systems a...
The adoption of multi-sensor data fusion techniques is essential to effectively merge and analyze he...
Autonomous mobile robots usually require a large number of sensor types and sensing modules. There a...
In smart environments, a multi-robot system is difficult to achieve a high confidence level of infor...
Abstract- The problem of decision fusion has been studied for distributed sensor systems in the past...
peer reviewedRobots have to be able to function in a multitude of different situations and environme...
Multi-sensor data fusion is extensively used to merge data collected by heterogeneous sensors deploy...
Autonomous systems, particularly unmanned aerial systems (UAS), remain limited in autonomous capabil...
In order to get the modularity and reconfigurability for sensor information fusion services in moder...
A basic requirement for an autonomous mobile robot is to localize itself with repect to a given coor...
This dissertation proposes a novel method called state-dependent sensor measurement models (SDSMMs)....
We present a system for performing multi-sensor fusion that learns from experience, i.e., from train...