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Visual Tracking by Sampling Tree-Structured Graphical Models

机译:通过采样树状结构图形模型进行视觉跟踪

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Probabilistic tracking algorithms typically rely on graphical models based on the first-order Markov assumption. Although such linear structure models are simple and reasonable, it is not appropriate for persistent tracking since temporal failures by short-term occlusion, shot changes, and appearance changes may impair the remaining frames significantly. More general graphical models may be useful to exploit the intrinsic structure of input video and improve tracking performance. Hence, we propose a novel offline tracking algorithm by identifying a tree-structured graphical model, where we formulate a unified framework to optimize tree structure and track a target in a principled way, based on MCMC sampling. To reduce computational cost, we also introduce a technique to find the optimal tree for a small number of key frames first and employ a semi-supervised manifold alignment technique of tree construction for all frames. We evaluated our algorithm in many challenging videos and obtained outstanding results compared to the state-of-the-art techniques quantitatively and qualitatively.
机译:概率跟踪算法通常依赖于基于一阶马尔可夫假设的图形模型。尽管这样的线性结构模型简单合理,但由于短期遮挡,镜头变化和外观变化造成的时间故障可能会严重损害其余帧,因此不适合进行持久跟踪。更通用的图形模型对于利用输入视频的固有结构并改善跟踪性能可能很有用。因此,我们通过识别树结构图形模型提出了一种新颖的离线跟踪算法,在此模型中,我们基于MCMC采样,制定了统一的框架来优化树结构并以有原则的方式跟踪目标。为了减少计算成本,我们还引入了一种技术,该技术首先针对少量关键帧找到最佳树,并对所有帧采用树结构的半监督歧管对齐技术。我们在许多具有挑战性的视频中评估了我们的算法,并在定量和定性上与最新技术相比获得了出色的结果。

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