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Adaptive multi-cue fusion for visual target tracking based on uncertainly measure

机译:基于不确定度量的自适应多线索融合视觉目标跟踪

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This paper presents a novel adaptive tracking algorithm that fuses multiple cues based on feature uncertainty measurement in the particle filter framework. We first introduce a self-adaptive multi-cue fusion strategy, which overcomes the drawbacks of the traditional product fusion and sum fusion strategies. Furthermore, the proposed strategy effectively sharpens the distribution of the fused posterior as well as makes the tracking results less sensitive to the noise. Then, based on the fact that tracking failure often happens in the cases of low discriminative abilities of the observed features, we define a new feature uncertainty measurement. The proposed uncertainty measurement is thereafter used to adaptively adjust the relative contributions of different cues to tracking. An extensive number of comparative experiments show that the proposed tracking algorithm is more stable and robust than the single feature, product fusion, and sum fusion tracking algorithms.
机译:本文提出了一种新颖的自适应跟踪算法,该算法基于粒子滤波器框架中的特征不确定性测量融合了多个线索。我们首先介绍一种自适应的多线索融合策略,它克服了传统产品融合和求和融合策略的缺点。此外,提出的策略有效地提高了融合后路的分布,并使跟踪结果对噪声的敏感性降低。然后,基于在观察到的特征的判别能力低的情况下经常发生跟踪失败的事实,我们定义了一种新的特征不确定性度量。所提出的不确定性测量此后用于自适应地调整不同线索对跟踪的相对贡献。大量的比较实验表明,所提出的跟踪算法比单特征,产品融合和求和融合跟踪算法更稳定,更健壮。

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