In this article we show that traditional tracking algorithms should be adjusted when the objective is to recursively estimate an unordered (unlabeled) set of target state vectors, i.e., when it is not of importance to try to preserve target identities over time. We study scenarios where the number of targets is known, and propose a new version of the joint probabilistic data association (JPDA) filter that we call set JPDA (SJPDA). Simulations show that the new filter outperforms the JPDA in a two-target scenario when evaluated according to the mean optimal subpattern assignment (MOSPA) measure
This paper proposes a novel joint probabilistic data association (JPDA) filter for joint target trac...
International audienceThe size of target will induce a degradation of tracking performance, which ha...
A practical probabilistic data association filter is proposed for tracking multiple targets in clutt...
In this article we show that traditional tracking algorithms should be adjusted when the objective i...
In this report we show that when targets are closely spaced, traditional trackingalgorithms can be a...
In this article, we show that when targets are closelyspaced, traditional tracking algorithms can be...
The Set JPDA (SJPDA) filter is a recently developed multi-target tracking filter that utilizes the r...
In this report we show that when targets are closely spaced, traditional tracking algorithms can be ...
The Set JPDA (SJPDA) filter is a recently developed multi-target tracking filter that utilizes the r...
The Set JPDA (SJPDA) filter is a recently developed multi-target tracking filter that utilizes the r...
The Set JPDA (SJPDA) filter is a recently developed multi-target tracking filter that utilizes the r...
In this paper, we revisit the joint probabilistic data association (JPDA) technique and propose a no...
In this paper we look at various options for calculating target-measurement association probabilitie...
In this paper we look at various options for calculating target-measurement association probabilitie...
This paper proposes a novel joint probabilistic data association (JPDA) filter for joint target trac...
This paper proposes a novel joint probabilistic data association (JPDA) filter for joint target trac...
International audienceThe size of target will induce a degradation of tracking performance, which ha...
A practical probabilistic data association filter is proposed for tracking multiple targets in clutt...
In this article we show that traditional tracking algorithms should be adjusted when the objective i...
In this report we show that when targets are closely spaced, traditional trackingalgorithms can be a...
In this article, we show that when targets are closelyspaced, traditional tracking algorithms can be...
The Set JPDA (SJPDA) filter is a recently developed multi-target tracking filter that utilizes the r...
In this report we show that when targets are closely spaced, traditional tracking algorithms can be ...
The Set JPDA (SJPDA) filter is a recently developed multi-target tracking filter that utilizes the r...
The Set JPDA (SJPDA) filter is a recently developed multi-target tracking filter that utilizes the r...
The Set JPDA (SJPDA) filter is a recently developed multi-target tracking filter that utilizes the r...
In this paper, we revisit the joint probabilistic data association (JPDA) technique and propose a no...
In this paper we look at various options for calculating target-measurement association probabilitie...
In this paper we look at various options for calculating target-measurement association probabilitie...
This paper proposes a novel joint probabilistic data association (JPDA) filter for joint target trac...
This paper proposes a novel joint probabilistic data association (JPDA) filter for joint target trac...
International audienceThe size of target will induce a degradation of tracking performance, which ha...
A practical probabilistic data association filter is proposed for tracking multiple targets in clutt...