基于事件的多模态活动建模和识别方法

M. Pijl, S. Par, Caifeng Shan
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引用次数: 7

摘要

人类活动建模和识别的主题仍然提供了许多挑战,尽管得到了相当大的关注。这些挑战包括准确的活动识别通常需要大量的传感器,以及对用户特定训练样本的需求。本文提出了一种仅使用单个摄像头和麦克风作为传感器的日常生活活动识别方法。场景分析技术用于对音频和视频事件进行分类,这些事件用于使用隐马尔可夫模型对一组活动建模。数据通过8名参与者的录音获得。将场景分析算法生成的事件与手工标注得到的事件进行对比。此外,还比较了几种模型参数估计技术。在许多实验中,如果活动被完全观察到,这些模型在注释数据上的分类准确率为97%,在场景分析数据上的分类准确率为94%。使用滑动窗口方法对正在进行的活动进行分类,在注释数据上的分类准确率为79%,在场景分析数据上的分类准确率为73%。研究还表明,在场景分析数据上,与任何一种单独的模态相比,多模态方法产生了更好的结果。最后,可以得出结论,创建的模型即使在参与者中也表现良好。
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An event-based approach to multi-modal activity modeling and recognition
The topic of human activity modeling and recognition still provides many challenges, despite receiving considerable attention. These challenges include the large number of sensors often required for accurate activity recognition, and the need for user-specific training samples. In this paper, an approach is presented for recognition of activities of daily living (ADL) using only a single camera and microphone as sensors. Scene analysis techniques are used to classify audio and video events, which are used to model a set of activities using hidden Markov models. Data was obtained through recordings of 8 participants. The events generated by scene analysis algorithms are compared to events obtained through manual annotation. In addition, several model parameter estimation techniques are compared. In a number of experiments, it is shown that if activities are fully observed these models yield a class accuracy of 97% on annotated data, and 94% on scene analysis data. Using a sliding window approach to classify activities in progress yields a class accuracy of 79% on annotated data, and 73% on scene analysis data. It is also shown that a multi-modal approach yields superior results compared to either individual modality on scene analysis data. Finally, it can be concluded the created models perform well even across participants.
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