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Hierarchically linked infinite hidden Markov model based trajectory analysis and semantic region retrieval in a trajectory dataset

机译:基于分层链接的无限隐马尔可夫模型的轨迹分析和轨迹数据集中的语义区域检索

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With an increasing attempt of finding latent semantics in a video dataset, trajectories have become key components since they intrinsically include concise characteristics of object movements. An approach to analyze a trajectory dataset has concentrated on semantic region retrieval, which extracts some regions in which have their own patterns of object movements. Semantic region retrieval has become an important topic since the semantic regions are useful for various applications, such as activity analysis. The previous literatures, however, have just revealed semantically relevant points, rather than actual regions, and have less consideration of temporal dependency of observations in a trajectory. In this paper, we propose a novel model for trajectory analysis and semantic region retrieval. We first extend the meaning of semantic regions that can cover actual regions. We build a model for the extended semantic regions based on a hierarchically linked infinite hidden Markov model, which can capture the temporal dependency between adjacent observations, and retrieve the semantic regions from a trajectory dataset. In addition, we propose a sticky extension to diminish redundant semantic regions that occur in a non-sticky model. The experimental results demonstrate that our models well extract semantic regions from a real trajectory dataset. (C) 2017 Elsevier Ltd. All rights reserved.
机译:随着在视频数据集中寻找潜在语义的不断尝试,轨迹已成为关键组成部分,因为它们本质上包括对象运动的简洁特征。分析轨迹数据集的一种方法集中在语义区域检索上,该方法提取了一些具有自己的对象运动模式的区域。语义区域检索已成为重要的话题,因为语义区域可用于各种应用程序,例如活动分析。然而,先前的文献仅揭示了语义上相关的点,而不是实际的区域,并且较少考虑轨迹中观测的时间依赖性。在本文中,我们提出了一种用于轨迹分析和语义区域检索的新型模型。我们首先扩展可以覆盖实际区域的语义区域的含义。我们基于分层链接的无限隐马尔可夫模型建立了扩展语义区域的模型,该模型可以捕获相邻观测值之间的时间依赖性,并从轨迹数据集中检索语义区域。此外,我们提出了一种粘性扩展,以减少在非粘性模型中出现的冗余语义区域。实验结果表明,我们的模型很好地从真实轨迹数据集中提取了语义区域。 (C)2017 Elsevier Ltd.保留所有权利。

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