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Improving Activity Recognitionby Segmental Pattern Mining

机译:通过分段模式挖掘改善活动识别

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Activity recognition is a key task for the development of advanced and effective ubiquitous applications in fields like ambient assisted living. A major problem in designing effective recognition algorithms is the difficulty of incorporating long-range dependencies between distant time instants without incurring substantial increase in computational complexity of inference. In this paper we present a novel approach for introducing long-range interactions based on sequential pattern mining. The algorithm searches for patterns characterizing time segments during which the same activity is performed. A probabilistic model is learned to represent the distribution of pattern matches along sequences, trying to maximize the coverage of an activity segment by a pattern match. The model is integrated in a segmental labeling algorithm and applied to novel sequences, tagged according to matches of the extracted patterns. The rationale of the approach is that restricting dependencies to span the same activity segment (i.e., sharing the same label), allows keeping inference tractable. An experimental evaluation shows that enriching sensor-based representations with the mined patterns allows improving results over sequential and segmental labeling algorithms in most of the cases. An analysis of the discovered patterns highlights non-trivial interactions spanning over a significant time horizon.
机译:活动识别是开发诸如环境辅助生活等领域中先进且有效的普遍应用程序的关键任务。设计有效的识别算法的主要问题是难以在不增加推理的计算复杂度的情况下在遥远的时间点之间合并远程依赖性。在本文中,我们提出了一种新颖的方法,用于基于顺序模式挖掘引入远程交互。该算法搜索表征执行相同活动的时间段的模式。学习概率模型来表示模式匹配沿序列的分布,尝试通过模式匹配来最大化活动段的覆盖范围。该模型集成在分段标记算法中,并应用于新序列,根据提取的模式的匹配进行标记。该方法的基本原理是,将依赖项限制为跨越相同的活动细分(即,共享相同的标签),可以使推理易于处理。实验评估表明,在大多数情况下,使用挖掘的模式丰富基于传感器的表示形式可以改善结果,优于顺序和分段标记算法。对发现的模式的分析突出了跨越重要时间跨度的非平凡交互。

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