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Classifying spatiotemporal object trajectories using unsupervised learning in the coefficient feature space

机译:在系数特征空间中使用无监督学习对时空目标轨迹进行分类

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摘要

This paper proposes a novel technique for clustering and classification of object trajectory-based video motion clips using spatiotemporal function approximations. Assuming the clusters of trajectory points are distributed normally in the coefficient feature space, we propose a Mahalanobis classifier for the detection of anomalous trajectories. Motion trajectories are considered as time series and modelled using orthogonal basis function representations. We have compared three different function approximations - least squares polynomials, Chebyshev polynomials and Fourier series obtained by Discrete Fourier Transform (DFT). Trajectory clustering is then carried out in the chosen coefficient feature space to discover patterns of similar object motions. The coefficients of the basis functions are used as input feature vectors to a Self-Organising Map which can learn similarities between object trajectories in an unsupervised manner. Encoding trajectories in this way leads to efficiency gains over existing approaches that use discrete point-based flow vectors to represent the whole trajectory. Our proposed techniques are validated on three different datasets -Australian sign language, hand-labelled object trajectories from video surveillance footage and real-time tracking data obtained in the laboratory. Applications to event detection and motion data mining for multimedia video surveillance systems are envisaged.
机译:本文提出了一种新技术,利用时空函数逼近对基于对象轨迹的视频运动片段进行聚类和分类。假设轨迹点的聚类在系数特征空间中呈正态分布,我们提出了一种Mahalanobis分类器来检测异常轨迹。运动轨迹被视为时间序列,并使用正交基函数表示法建模。我们比较了三种不同的函数近似值-最小二乘多项式,切比雪夫多项式和通过离散傅立叶变换(DFT)获得的傅立叶级数。然后在选定的系数特征空间中进行轨迹聚类,以发现相似物体运动的模式。基函数的系数用作自组织映射的输入特征向量,该自组织映射可以无监督地学习对象轨迹之间的相似性。通过这种方式对轨迹进行编码比使用基于离散点的流向量表示整个轨迹的现有方法可提高效率。我们提出的技术在三个不同的数据集上得到了验证-澳大利亚手语,来自视频监控镜头的手动标记的物体轨迹以及在实验室中获得的实时跟踪数据。设想了在多媒体视频监视系统的事件检测和运动数据挖掘中的应用。

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