Performance Prediction of Multiple Hypothesis Tracking Algorithm

다중 가설 추적 알고리듬의 추적 성능예측

  • 정영헌 (경운대학교 디지털전자공학부)
  • Published : 2003.07.01

Abstract

In this paper, we predict tracking performance of the multiple hypothesis tracking (MHT) algorithm. The MHT algorithm is known to be an optimal Bayesian approach and is superior to asly other tracking filters because it takes into account the events that the measurements can be originated from new targets and false alarms 3s well as interesting targets. In the MHT algorithm, a number of candidate hypotheses are generated and evaluated later as more data are received. The probability of each candidate hypotheses is approximately evaluated by using the hybrid conditional average approach (HYCA). We performed numerical experiments to show the validity of our performance prediction.

Keywords