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Behaviour recognition using multivariate m-mediod based modelling of motion trajectories

机译:使用基于多元m媒介的运动轨迹建模进行行为识别

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The importance of behaviour analysis and activity recognition systems continue to increase with the increasing demand and deployment of video surveillance systems. Motion trajectories provide rich spatio-temporal information about an object's activity. In this article, we present a supervised feature extraction and multivariate modelling approach for motion-based behaviour recognition and anomaly detection. In the proposed motion learning system, trajectories are treated as time series and modelled using modified DFT-based coefficient feature space representation. We employ supervised dimensionality reduction using Local Fisher Discriminant Analysis to enhance the feature space representation of trajectories. A modelling approach, referred to as multivariate m-mediods, is proposed that can cater for the presence of multivariate distribution of samples within a given motion pattern. A hierarchical indexing of mediods and retrieval approach is presented to improve the efficiency of proposed classifier. Our proposed techniques are validated using variety of simulated and complex real-life trajectory datasets.
机译:行为分析和活动识别系统的重要性随着视频监控系统需求的增加和部署而不断增加。运动轨迹可提供有关对象活动的丰富时空信息。在本文中,我们提出了一种用于基于运动的行为识别和异常检测的监督特征提取和多元建模方法。在提出的运动学习系统中,轨迹被视为时间序列,并使用基于DFT的改进的系数特征空间表示法进行建模。我们使用局部Fisher判别分析采用有监督的降维方法来增强轨迹的特征空间表示。提出了一种建模方法,称为多变量m-方法,可以满足给定运动模式内样本的多变量分布。提出了一种方法和检索方法的分层索引,以提高所提出分类器的效率。我们提出的技术已使用各种模拟和复杂的现实生活轨迹数据集进行了验证。

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