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Tracking with Multiple Prediction Models

机译:使用多种预测模型进行跟踪

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摘要

In Bayesian-based tracking systems, prediction is an essential part of the framework. It models object motion and links the internal estimated motion parameters with sensory measurement of the object from the outside world. In this paper a Bayesian-based tracking system with multiple prediction models is introduced. The benefit of multiple model prediction is that each of the models has individual strengths suited for different situations. For example, extreme situations like a rebound can be better coped with a rebound prediction model than with a linear one. That leads to an overall increase of prediction quality. However, it is still an open question of research how to organize the prediction models. To address this topic, in this paper, several quality measures are proposed as switching criteria for prediction models. In a final evaluation by means of two real-world scenarios, the performance of the tracking system with two models (a linear one and a rebound one) is compared concerning different switching criteria for the prediction models.
机译:在基于贝叶斯的跟踪系统中,预测是框架的重要组成部分。它对物体运动进行建模,并将内部估计的运动参数与外界对物体的感官测量联系起来。本文介绍了一种基于贝叶斯的具有多个预测模型的跟踪系统。多个模型预测的好处是每个模型都有适合不同情况的单独优势。例如,与反弹预测模型相比,与线性预测模型相比,可以更好地应对像反弹这样的极端情况。这导致整体上提高了预测质量。然而,如何组织预测模型仍是一个尚待研究的问题。为了解决这个问题,在本文中,提出了几种质量度量作为预测模型的转换标准。在通过两个真实场景进行的最终评估中,针对预测模型的不同切换标准,比较了具有两种模型(线性模型和反弹模型)的跟踪系统的性能。

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