IntelliChair:一种基于姿态分析的活动检测和预测方法

Teng Fu, Allan Macleod
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引用次数: 21

摘要

本文提出了一种强大的、低成本的、基于传感器的系统,该系统能够识别坐姿,并将它们与坐姿活动相对应。该系统还能够预测单个用户的后续活动。力感电阻安装在座椅和椅背上,以收集触觉(即基于触摸的)姿势信息。随后,姿势信息被输入到两个分类器中,一个用于背部姿势,另一个用于腿部姿势。利用隐马尔可夫模型方法从坐姿序列中建立人体活动模型。此外,通过实现上下文感知预测算法(例如Active-Lezi),系统发现模式并预测后续活动。该系统将带来许多潜在的应用,如分析坐着或躺着的受试者、康复运动跟踪、互动辅助和异常活动检测。
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IntelliChair: An Approach for Activity Detection and Prediction via Posture Analysis
This paper proposes a robust, low-cost, sensor based system that is capable of recognising sitting postures and placing them in correspondence with sitting activities. This system is also capable of predicting subsequent activities for individual users. Force Sensing Resistors are mounted on the seat and back of a chair to gather the hap tic (i.e., Touch-based) posture information. Subsequently, posture information is fed into two classifiers, one for back posture and the other one for leg posture. A hidden Markov model approach is used to establish the activity model from sitting posture sequences. Furthermore, by implementing a context awareness prediction algorithm (e.g. Active-Lezi), the system discovers patterns and predicts subsequent activities. The system will lead to many potential applications such as the analysis of sitting or lying subjects, motion tracking for rehabilitation, interaction assistance, and the detection of anomalous activities.
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