This work presents an adaptive approach to cooperative aerial search and localization (SAL) which implements Lissajous search patterns and non-Gaussian observation likelihoods to preserve high target information. The adaptive component of the framework utilizes a simultaneous estimation and modeling technique to both estimate agent states and correct their motion models. In order to maximize the information available about a target even when it is not observed by a search agent, multi-Gaussian observation likelihoods are continuously generated for each agent and then fused across the search team. Monte Carlo simulation studies show that the proposed adaptive localization framework outperforms standard filtering techniques by significant mar...
International audienceThis paper addresses the problem of searching and tracking of an a priori unkn...
In this thesis, a solution to the multi-Unmanned Aerial Vehicle (UAV) search and intercept problem f...
Unmanned Aerial Vehicles (UAVs) show promise in a variety of applications and recently were explored...
This paper presents a cooperative aerial search-and-localization framework for applications where kn...
As drone technology becomes increasingly accessible in commercial and defense sectors, it is importa...
This paper proposes an optimization strategy for searching moving targets’ locations using co...
International audienceThis paper addresses the cooperative search of static ground targets by a grou...
This paper presents a distributed cooperative search algorithm for multiple unmanned aerial vehicles...
Abstract—The main contribution of this work is an online path planning framework for cooperative sea...
Abstract—This paper studies the active target-tracking prob-lem for a team of unmanned aerial vehicl...
This paper addresses a vision-based cooperative search for multiple mobile ground targets by a group...
This paper addresses a vision-based cooperative search for multiple mobile ground targets by a group...
The contribution of this paper is an experimentally verified real-time algorithm for combined probab...
This paper addresses vision-based cooperative search for multiple mobile ground targets by a group o...
Abstract — The contribution of this paper is an experimen-tally verified real-time algorithm for com...
International audienceThis paper addresses the problem of searching and tracking of an a priori unkn...
In this thesis, a solution to the multi-Unmanned Aerial Vehicle (UAV) search and intercept problem f...
Unmanned Aerial Vehicles (UAVs) show promise in a variety of applications and recently were explored...
This paper presents a cooperative aerial search-and-localization framework for applications where kn...
As drone technology becomes increasingly accessible in commercial and defense sectors, it is importa...
This paper proposes an optimization strategy for searching moving targets’ locations using co...
International audienceThis paper addresses the cooperative search of static ground targets by a grou...
This paper presents a distributed cooperative search algorithm for multiple unmanned aerial vehicles...
Abstract—The main contribution of this work is an online path planning framework for cooperative sea...
Abstract—This paper studies the active target-tracking prob-lem for a team of unmanned aerial vehicl...
This paper addresses a vision-based cooperative search for multiple mobile ground targets by a group...
This paper addresses a vision-based cooperative search for multiple mobile ground targets by a group...
The contribution of this paper is an experimentally verified real-time algorithm for combined probab...
This paper addresses vision-based cooperative search for multiple mobile ground targets by a group o...
Abstract — The contribution of this paper is an experimen-tally verified real-time algorithm for com...
International audienceThis paper addresses the problem of searching and tracking of an a priori unkn...
In this thesis, a solution to the multi-Unmanned Aerial Vehicle (UAV) search and intercept problem f...
Unmanned Aerial Vehicles (UAVs) show promise in a variety of applications and recently were explored...