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A Spanning Tree-Based Human Activity Prediction System Using Life Logs from Depth Silhouette-Based Human Activity Recognition

机译:一种基于树木的人类活动预测系统,使用寿命记录从深度轮廓的人类活动识别

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In this work, we propose a Human Activity Prediction (HAP) system using activity sequence spanning trees constructed from a life-log created by a video sensor-based daily Human Activity Recognition (HAR) system using time-sequential Independent Component (IC)-based depth silhouette features with Hidden Markov Models (HMMs). In the daily HAR system, the IC fea-tures are extracted from the collection of the depth silhouettes containing vari-ous daily human activities such as walking, sitting, lying, cooking, eating etc. Using these features, HMMs are used to model the time sequential features and recognize various human activities. The depth silhouette-based human activity recognition system is used to recognize daily human activities automatically in real time, which creates a life-log of daily activity events. In this work, we pro-pose a method for human activity prediction using fixed-length activity se-quence spanning trees based on the life-log. Utilizing the consecutive activities recorded in an activity sequence database (i.e. life-log) for a specific period of time of each day over a period such as a month, the fixed-length spanning trees can be constructed for the sequences starting with each activity where the leaf nodes contain the frequency of the fixed-length consecutive activity sequences. Once the trees are constructed, to predict an activity after a sequence of activi-ties, we traverse the spanning trees until a path up to the previous node of the leaf nodes is matched with the testing pattern. Finally, we can predict the next activity based on the highest frequency of the leaf nodes along the matched path. The prediction experiments over the computer simulated data which is based on the daily logs show satisfactory results. Our video sensor-based hu-man activity recognition and prediction systems can be utilized for practical ap-plications such as smart and proactive healthcare.
机译:在这项工作中,我们提出了一种使用由由基于视频传感器的每日人类活动识别(HAR)系统创建的寿命的寿命阶段的活动序列跨越树的人类活动预测(HAP)系统使用时间顺序独立组件(IC) - 基于深度剪影功能,带有隐马尔可夫模型(HMMS)。在每日HAR系统中,IC FEA-TURE从包含Vari-OUS日常人类活动的深度轮廓的集合中提取,例如步行,坐,躺着,烹饪,进食等,使用这些特征,HMMS用于模拟时间顺序特征,识别各种人类活动。基于深度轮廓的人类活动识别系统用于实时自动识别日常人类活动,这会产生日常活动事件的生命记录。在这项工作中,我们使用基于寿命日志的固定长度活动Se-Quence跨越树来提出人类活动预测方法。利用在每天的活动序列数据库(即Life-log)中记录的连续活动,例如在诸如一个月的时期,可以为从每个活动开始的序列构建固定长度的跨越树叶节点包含固定长度连续活动序列的频率。一旦树木被构造出来,要预测一系列活性关系后,我们遍历生成树,直到与测试模式匹配到叶节点的先前节点的路径。最后,我们可以基于沿着匹配路径的叶节点的最高频率来预测下一个活动。基于日常日志的计算机模拟数据上的预测实验显示了令人满意的结果。我们的视频传感器的HU-MAN活动识别和预测系统可用于实际的AP折叠,如智能和主动医疗保健。

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