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Prediction and Classification of Motion Trajectories Using Spatio-Temporal NMF

机译:使用时空NMF的运动轨迹预测与分类

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This paper's intention is to present a new approach for decomposing motion trajectories. The proposed algorithm is based on non-negative matrix factorization, which is applied to a grid like representation of the trajectories. From a set of training samples a number of basis primitives is generated. These basis primitives are applied to reconstruct an observed trajectory. The reconstruction information can be used afterwards for classification. An extension of the reconstruction approach furthermore enables to predict the observed movement into the future. The proposed algorithm goes beyond the standard methods for tracking, since it does not use an explicit motion model but is able to adapt to the observed situation. In experiments we used real movement data to evaluate several aspects of the proposed approach.
机译:本文的意图是提出一种用于分解运动轨迹的新方法。所提出的算法基于非负矩阵分解,其应用于轨迹的表示象征的网格。从一组训练样本中产生许多基元原语。这些基原语被应用于重建观察到的轨迹。之后可以使用重建信息进行分类。此外,重建方法的延伸可以使观察到的移动到未来。所提出的算法超出了跟踪的标准方法,因为它不使用明确的运动模型,但能够适应观察到的情况。在实验中,我们使用实际移动数据来评估所提出的方法的几个方面。

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