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首页> 外文期刊>Aerospace and Electronic Systems, IEEE Transactions on >Joint class identification and target classification using multiple HMMs
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Joint class identification and target classification using multiple HMMs

机译:使用多个HMM进行联合类别识别和目标分类

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摘要

Target classification has received significant attention in the tracking literature. Algorithms for joint tracking and classification that are capable of improving tracking performance by exploiting the interdependency between target class and target kinematic behavior have already been proposed. In these works, target identification relies on the a priori information about target classes, but, in practice, the prior class information may not always be available or not accurate. This motivates the design of a new estimation method that can jointly build target classes and classify targets even when a priori information is not available. Based on the generic expectation-maximization framework, a novel joint multitarget class estimation and target identification algorithm that requires only target feature measurements is proposed in this paper to achieve this goal. In this approach, multitarget classes are characterized by multiple hidden Markov models. Besides theoretical derivations, simulations are presented to verify the effectiveness of the proposed algorithm.
机译:目标分类在跟踪文献中受到了极大的关注。已经提出了用于联合跟踪和分类的算法,该算法能够通过利用目标类别和目标运动行为之间的相互依赖性来提高跟踪性能。在这些作品中,目标识别依赖于有关目标类别的先验信息,但实际上,先验类别信息可能并不总是可用或不准确。这激发了一种新的估计方法的设计,即使在先验信息不可用的情况下,该估计方法也可以联合建立目标类别和目标分类。基于通用期望最大化框架,本文提出了一种仅需要目标特征测量的新型联合多目标类别估计和目标识别算法。在这种方法中,多目标类的特征在于多个隐马尔可夫模型。除了理论推导外,还通过仿真来验证所提出算法的有效性。

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