Underwater Target Discrimination using Sequential Testings and Data Fusion

순차 검증과 자료융합을 이용한 수중 표적 판별

  • Kwak, Eun-Joo (Seoul Telecommunication O & M Research Center, Korea Telecom)
  • 곽은주 (한국통신 서울통신운용연구단)
  • Published : 1998.07.20

Abstract

In this paper we discuss an algorithm to discriminate a target under track against multiple acoustic counter-measure (ACM) sources, based on sequential testings of multiple hypotheses. The ACM sources are separated from the target under track and generate, while drifting, measurements with false range and Doppler information. The purpose of the ACM is to mislead the target tracking and to help the true target evade a pursuer. The proposed algorithm uses as a test statistic a function of both the sequences of processed waveform signature and the innovation sequences from extended Kalman filters to estimate the target dynamics and the drifting positions of the ACM sources. Numerical experiments on various scenarios show that the proposed algorithm discriminates the target faster with a higher probability of success than the algorithm using only the innovation sequences from extended Kalman filters.

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