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Multiple-Target Tracking with Competitive Hopfield Neural Network Based Data Association

机译:基于竞争Hopfield神经网络的数据关联多目标跟踪

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摘要

Data association which obtains relationship between radar measurements and existing tracks plays one important role in radar multiple-target tracking (MTT) systems. A new approach to data association based on the competitive Hopfield neural network (CHNN) is investigated, where the matching between radar measurements and existing target tracks is used as a criterion to achieve a global consideration. Embedded within the CHNN is a competitive learning algorithm that resolves the dilemma of occasional irrational solutions in traditional Hopfield neural networks. Additionally, it is also shown that our proposed CHNN-based network is guaranteed to converge to a stable state in performing data association and the CHNN-based data association combined with an MTT system demonstrates target tracking capability. Computer simulation results indicate that this approach successfully solves the data association problems.
机译:获得雷达测量值与现有航迹之间关系的数据关联在雷达多目标跟踪(MTT)系统中扮演着重要角色。研究了一种基于竞争Hopfield神经网络(CHNN)的数据关联新方法,其中雷达测量值与现有目标轨道之间的匹配被用作实现全局考虑的标准。嵌入在CHNN中的是一种竞争性学习算法,它解决了传统Hopfield神经网络中偶发性非理性解决方案的难题。另外,还表明,我们提出的基于CHNN的网络在执行数据关联时可以保证收敛到稳定状态,并且与MTT系统结合的基于CHNN的数据关联具有目标跟踪能力。计算机仿真结果表明,该方法成功解决了数据关联问题。

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