Ground moving target indicator (GMTI) radars are commonly used on airborne platforms in order to detect and track ground targets, such as cars. An operator can use the provided tracks in order to make inference about the behaviour of targets. Prior knowledge, such as road network information, plays a key role in obtaining accurate tracks and thus helping an operator make better inference. This work shows that prior knowledge can also be used for automated anomaly detection when tracking ground targets, thus lowering the workload of an operator. Models for several target behaviours of interest, such as stop-go motion, are presented and tested in simulated examples
In this paper a fast a priori knowledge-based ground moving target indication and parameter estimati...
This paper presents a preliminary knowledge based approach to Space-Time Adaptive Processing (STAP) ...
ln the ground battlefield surveillance domain, ground target tracking is considered to evaluate the ...
The general focus of this paper is the improvement of state-of-the-art Bayesian tracking filters spe...
Ground surveillance comprises track extraction and maintenance of single ground moving vehicles and ...
Ground moving target identification (GMTI) is a key capability of airborne surveillance radar. In th...
A novel knowledge-aided processing scheme is proposed for use in Ground Moving Target Indication (GM...
For analysing dynamic scenarios with ground moving vehicles, airborne GMTI radar is a well-suited se...
For analysing dynamic scenarios with multiple ground moving vehicles, airborne GMTI radar is a well-...
This study proposes an airborne behaviour monitoring methodology of ground vehicles based on a stati...
Ground Moving Target Indication (GMTI) for radars with a small number of phase centres with low pro...
Ground vehicles can be effectively tracked using a moving target indicator (MTI) radar. However, veh...
Ground Moving Target Indication (GMTI) operation relies on clutter suppression techniques for the de...
This paper proposes an airborne monitoring methodology of ground vehicle behaviour based on a fuzzy ...
This paper describes the application of Knowledge-Based System (KBS) to tracking. Section 2 paves th...
In this paper a fast a priori knowledge-based ground moving target indication and parameter estimati...
This paper presents a preliminary knowledge based approach to Space-Time Adaptive Processing (STAP) ...
ln the ground battlefield surveillance domain, ground target tracking is considered to evaluate the ...
The general focus of this paper is the improvement of state-of-the-art Bayesian tracking filters spe...
Ground surveillance comprises track extraction and maintenance of single ground moving vehicles and ...
Ground moving target identification (GMTI) is a key capability of airborne surveillance radar. In th...
A novel knowledge-aided processing scheme is proposed for use in Ground Moving Target Indication (GM...
For analysing dynamic scenarios with ground moving vehicles, airborne GMTI radar is a well-suited se...
For analysing dynamic scenarios with multiple ground moving vehicles, airborne GMTI radar is a well-...
This study proposes an airborne behaviour monitoring methodology of ground vehicles based on a stati...
Ground Moving Target Indication (GMTI) for radars with a small number of phase centres with low pro...
Ground vehicles can be effectively tracked using a moving target indicator (MTI) radar. However, veh...
Ground Moving Target Indication (GMTI) operation relies on clutter suppression techniques for the de...
This paper proposes an airborne monitoring methodology of ground vehicle behaviour based on a fuzzy ...
This paper describes the application of Knowledge-Based System (KBS) to tracking. Section 2 paves th...
In this paper a fast a priori knowledge-based ground moving target indication and parameter estimati...
This paper presents a preliminary knowledge based approach to Space-Time Adaptive Processing (STAP) ...
ln the ground battlefield surveillance domain, ground target tracking is considered to evaluate the ...