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MOTION CLUSTERING USING SPATIOTEMPORAL APPROXIMATIONS

机译:使用时空近似的运动聚类

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In this paper a new technique is proposed for the clustering and classification of spatio-temporal object trajectories extracted from video motion clips. The trajectories are represented as motion time series and modelled using Chebyshev polynomial approximations. Trajectory clustering is then performed to discover patterns of similar object motion. The coefficients of the basis functions are used as an input feature vector to a Self-Organising Map which can learn similarities between object trajectories in an unsupervised manner. It is shown that applying machine learning techniques in the Chebyshev parameter subspace leads to significant performance gains over previous approaches that encode trajectories as point-based flow (PBF) vectors. Experiments using the PETS'04 tracking dataset demonstrate the effectiveness of clustering in the parameter subspace and improvements in overall classification accuracy in comparison with PBF vector encoding. We also show how this technique can be further extended to the detection of anomalous motion paths. Applications to motion data mining and event detection in video surveillance systems are envisaged.
机译:本文提出了一种新技术,用于对从视频运动剪辑中提取的时空目标轨迹进行聚类和分类。轨迹表示为运动时间序列,并使用Chebyshev多项式逼近进行建模。然后执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的方式学习对象轨迹之间的相似性。结果表明,在Chebyshev参数子空间中应用机器学习技术比将轨迹编码为基于点的流(PBF)向量的先前方法具有显着的性能提升。与PBF向量编码相比,使用PETS'04跟踪数据集进行的实验证明了在参数子空间中进行聚类的有效性以及总体分类准确性的提高。我们还将展示如何将该技术进一步扩展到异常运动路径的检测。设想将其应用于视频监视系统中的运动数据挖掘和事件检测。

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