This study proposes an airborne behaviour monitoring methodology of ground vehicles based on a statistical learning approach with domain knowledge given by road map information. To monitor and track the moving ground target using unmanned aerial vehicle aboard a moving target indicator, an interactive multiple model (IMM) filter is firstly applied. The IMM filter consists of an on-road moving mode using a road-constrained filter and an off-road moving mode using a conventional filter. Mode probability is also calculated from the IMM filter, and it provides deviation of the vehicle from the road. Then, a novel hybrid algorithm for anomalous behaviour recognition is developed using a Gaussian process regression on velocity profile along the o...
Particle filters have emerged as a powerful method for solving multi-hypothesis state estimation pro...
Traffic microscopic simulation models are able to represent traffic conditions and their evolution o...
This paper proposes a new domain knowledge aided Gaussian particle filtering based approach for the ...
This study proposes an airborne behaviour monitoring methodology of ground vehicles based on a stati...
This paper proposes a behaviour recognition methodology for ground vehicles moving within road traff...
This paper proposes an airborne monitoring methodology of ground vehicle behaviour based on a fuzzy ...
In this paper we compare four different sequential estimation algorithms for tracking a single maneu...
In this paper we compare four different sequential estimation algorithms for tracking a single maneu...
This paper proposes a ground vehicle tracking method using an airborne ground moving target indicato...
This paper addresses the problem of maneuver recognition and behavior anomaly detection for generic ...
Drones are prone to abuse due to their low cost and their pool of potential illegal applications tha...
Situation awareness is required for an Unmanned Aerial Vehicle (UAV) when it makes an arrival at an ...
Ground moving target indicator (GMTI) radars are commonly used on airborne platforms in order to det...
AbstractResearch in road users’ behaviour typically depends on detailed observational data availabil...
Masters Degree. University of KwaZulu-Natal, Durban.Manual visual surveillance systems are subject t...
Particle filters have emerged as a powerful method for solving multi-hypothesis state estimation pro...
Traffic microscopic simulation models are able to represent traffic conditions and their evolution o...
This paper proposes a new domain knowledge aided Gaussian particle filtering based approach for the ...
This study proposes an airborne behaviour monitoring methodology of ground vehicles based on a stati...
This paper proposes a behaviour recognition methodology for ground vehicles moving within road traff...
This paper proposes an airborne monitoring methodology of ground vehicle behaviour based on a fuzzy ...
In this paper we compare four different sequential estimation algorithms for tracking a single maneu...
In this paper we compare four different sequential estimation algorithms for tracking a single maneu...
This paper proposes a ground vehicle tracking method using an airborne ground moving target indicato...
This paper addresses the problem of maneuver recognition and behavior anomaly detection for generic ...
Drones are prone to abuse due to their low cost and their pool of potential illegal applications tha...
Situation awareness is required for an Unmanned Aerial Vehicle (UAV) when it makes an arrival at an ...
Ground moving target indicator (GMTI) radars are commonly used on airborne platforms in order to det...
AbstractResearch in road users’ behaviour typically depends on detailed observational data availabil...
Masters Degree. University of KwaZulu-Natal, Durban.Manual visual surveillance systems are subject t...
Particle filters have emerged as a powerful method for solving multi-hypothesis state estimation pro...
Traffic microscopic simulation models are able to represent traffic conditions and their evolution o...
This paper proposes a new domain knowledge aided Gaussian particle filtering based approach for the ...