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首页> 外文期刊>EURASIP journal on image and video processing >A Combined PMHT and IMM Approach to Multiple-Point Target Tracking in Infrared Image Sequence
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A Combined PMHT and IMM Approach to Multiple-Point Target Tracking in Infrared Image Sequence

机译:PMHT和IMM结合的红外图像序列多点目标跟踪方法

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Data association and model selection are important factors for tracking multiple targets in a dense clutter environment. In this paper, we provide an effective solution to the tracking of multiple single-pixel maneuvering targets in a sequence of infrared images by developing an algorithm that combines a sequential probabilistic multiple hypothesis tracking (PMHT) and interacting multiple model (IMM). We explicitly model maneuver as a change in the target's motion model and demonstrate its effectiveness in our tracking application discussed in this paper. We show that inclusion of IMM enables tracking of any arbitrary trajectory in a sequence of infrared images without any a priori special information about the target dynamics. IMM allows us to incorporate different dynamic models for the targets and PMHT helps to avoid the uncertainty about the observation origin. It operates in an iterative mode using expectation-maximization (EM) algorithm. The proposed algorithm uses observation association as missing data.
机译:数据关联和模型选择是在密集杂乱环境中跟踪多个目标的重要因素。在本文中,我们通过开发一种结合顺序概率多假设跟踪(PMHT)和交互多模型(IMM)的算法,为跟踪红外图像序列中的多个单像素机动目标提供了有效的解决方案。我们明确将机动建模为目标运动模型的变化,并在本文讨论的跟踪应用中证明了其有效性。我们表明,包含IMM可以跟踪红外图像序列中的任意轨迹,而无需有关目标动态的任何先验特殊信息。 IMM允许我们为目标整合不同的动态模型,而PMHT有助于避免观测原点的不确定性。它使用期望最大化(EM)算法以迭代模式运行。所提出的算法使用观察关联作为缺失数据。

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