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Temporal Analysis of Motif Mixtures Using Dirichlet Processes

机译:使用Dirichlet过程对母体混合物进行时间分析

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摘要

In this paper, we present a new model for unsupervised discovery of recurrent temporal patterns (or motifs) in time series (or documents). The model is designed to handle the difficult case of multivariate time series obtained from a mixture of activities, that is, our observations are caused by the superposition of multiple phenomena occurring concurrently and with no synchronization. The model uses nonparametric Bayesian methods to describe both the motifs and their occurrences in documents. We derive an inference scheme to automatically and simultaneously recover the recurrent motifs (both their characteristics and number) and their occurrence instants in each document. The model is widely applicable and is illustrated on datasets coming from multiple modalities, mainly videos from static cameras and audio localization data. The rich semantic interpretation that the model offers can be leveraged in tasks such as event counting or for scene analysis. The approach is also used as a mean of doing soft camera calibration in a camera network. A thorough study of the model parameters is provided and a cross-platform implementation of the inference algorithm will be made publicly available.
机译:在本文中,我们提出了一种新模型,用于无监督地发现时间序列(或文档)中的时间序列(或主题)。该模型旨在处理从活动混合获得的多元时间序列的困难情况,也就是说,我们的观察结果是由同时发生且没有同步的多个现象的叠加引起的。该模型使用非参数贝叶斯方法来描述主题及其在文档中的出现。我们推导出一个推理方案,以自动并同时恢复每个文档中的重复图案(它们的特征和数量)及其出现的瞬间。该模型具有广泛的适用性,并在来自多种模式的数据集上进行了说明,这些数据集主要来自静态摄像机的视频和音频本地化数据。该模型提供的丰富语义解释可用于诸如事件计数或场景分析之类的任务中。该方法还用作在相机网络中进行软相机校准的一种手段。提供了对模型参数的深入研究,并将公开提供推理算法的跨平台实现。

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