Abstract:
The so-called lack of memory is an inherent challenge of the probability hypothesis density (PHD) filter and leads to the fact that only targets which rely on a currently...Show MoreMetadata
Abstract:
The so-called lack of memory is an inherent challenge of the probability hypothesis density (PHD) filter and leads to the fact that only targets which rely on a currently available measurement can securely be reported as present in the respective iteration. Yet there is no method presented that enables the sequential Monte Carlo (SMC) version of the intensity filter (iFilter) to manage failure of measurements. In this paper we develop a procedure and a complete implementation scheme within the SMC-iFilter to detect failure of measurements and to generate so-called pseudo measurements, which are used to estimate the state of targets, belonging to missing measurements. To assess the developed method with respect to accuracy a numerical study is carried out, using a simulation of a linear multi-object scenario.
Date of Conference: 04-06 September 2012
Date Added to IEEE Xplore: 11 October 2012
ISBN Information:
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- IEEE Keywords
- Index Terms
- Track Maintenance ,
- Target State ,
- Particle Filter ,
- Implementation Of Scheme ,
- Lack Of Memory ,
- Complete Scheme ,
- Root Mean Square Error ,
- State Space ,
- Distance Matrix ,
- Cut Off ,
- Estimate Of The Number ,
- Pedestrian ,
- Likelihood Function ,
- Index Set ,
- Detection Probability ,
- Previous Iteration ,
- Current Iteration ,
- Set Of Estimates ,
- Measure Space ,
- Assignment Problem ,
- Maintenance Procedures ,
- Existence Probability ,
- Target Estimation ,
- Particle Weight ,
- Optimal Assignment ,
- Existence Of Targets ,
- Iterative Estimation
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Track Maintenance ,
- Target State ,
- Particle Filter ,
- Implementation Of Scheme ,
- Lack Of Memory ,
- Complete Scheme ,
- Root Mean Square Error ,
- State Space ,
- Distance Matrix ,
- Cut Off ,
- Estimate Of The Number ,
- Pedestrian ,
- Likelihood Function ,
- Index Set ,
- Detection Probability ,
- Previous Iteration ,
- Current Iteration ,
- Set Of Estimates ,
- Measure Space ,
- Assignment Problem ,
- Maintenance Procedures ,
- Existence Probability ,
- Target Estimation ,
- Particle Weight ,
- Optimal Assignment ,
- Existence Of Targets ,
- Iterative Estimation