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Object joint detection and tracking using adaptive multiple motion models

机译:使用自适应多运动模型进行目标关节检测和跟踪

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摘要

This paper deals with the problem of detecting objects that may switch between different motion models. In order to accurately detect these moving objects taking into account possible changing motion models, we propose an adaptive multi-motion model in the joint detection and tracking (JDT) framework. The proposed technique differs from the existing JDT-based methods mainly in two ways. First we express the solution in the JDT framework via a formulation in the multiple motion model setting. Second, we introduce a new motion model prediction function which exploits the correlation between the motion model and object kinematic state. Experiments on both synthetic and real videos demonstrate that the JDT method employing the proposed adaptive multi-motion model can detect objects more accurately than the existing peer methods when objects change their motion models.
机译:本文涉及检测可能在不同运动模型之间切换的对象的问题。为了在考虑可能变化的运动模型的情况下准确地检测这些运动对象,我们在联合检测与跟踪(JDT)框架中提出了一种自适应的多运动模型。所提出的技术与现有的基于JDT的方法的不同之处主要在于两个方面。首先,我们通过多运动模型设置中的公式在JDT框架中表达解决方案。其次,我们引入了一种新的运动模型预测函数,该函数利用了运动模型与对象运动状态之间的相关性。在合成视频和真实视频上的实验表明,当对象更改其运动模型时,采用建议的自适应多运动模型的JDT方法比现有的对等方法可以更准确地检测对象。

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