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Efficient Optimization Algorithm for Space-Variant Mixture of Vector Fields

机译:向量场空间变量混合的高效优化算法

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摘要

This paper presents a new algorithm for trajectory classifi- cation of human activities. The presented framework uses a mixture of parametric space-variant vector fields to describe pedestrian’s trajecto- ries. An advantage of the proposed method is that the vector fields are not constant and depend on the pedestrian’s localization. This means that the switching motion among vector fields may occur at any image location and should be accurately estimated. In this paper, the model is equipped with a novel methodology to estimate the switching probabilities among motion regimes. More specifically, we propose an iterative optimization of switching probabilities based on the natural gradient vector, with respect to the Fisher information metric. This approach follows an information geometric framework and contrasts with more traditional approaches of constrained optimization in which euclidean gradient based methods are used combined with probability simplex constraints. We testify the per- formance superiority of the proposed approach in the classification of pedestrian’s trajectories in synthetic and real data sets concerning farfield surveillance scenarios.
机译:本文提出了一种新的人类活动轨迹分类算法。提出的框架使用混合参数空变矢量场来描述行人的轨迹。该方法的优点是矢量场不是恒定的,并且取决于行人的位置。这意味着矢量场之间的切换运动可能会出现在任何图像位置,并且应该准确估算。在本文中,该模型配备了一种新颖的方法来估计运动状态之间的切换概率。更具体地说,相对于Fisher信息度量,我们提出了基于自然梯度矢量的切换概率的迭代优化。该方法遵循信息几何框架,并且与更传统的约束优化方法形成对比,在约束优化中,基于欧几里得梯度的方法与概率单纯形约束相结合。我们在与远场监视场景有关的综合数据集和真实数据集中对行人轨迹进行分类时,证明了该方法在性能上的优越性。

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