Lee Myong-Woo, Khan Adil Mehmood, Kim Ji-Hwan, Cho Young-Sun, Kim Tae-Seong
Department of Biomedical Engineering, Kyung Hee University, Yongin, Gyeonggi, Republic of Korea.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:1390-3. doi: 10.1109/IEMBS.2010.5626729.
Recording a personal life log (PLL) of daily activities is an emerging technology for u-lifecare and e-health services. In this paper, we present an accelerometer-based personal life log system capable of human activity classification and exercise information generation. In our system, we use a tri-axial accelerometer and a real-time activity recognition scheme in which a set of augmented features of accelerometer signals, processed with Linear Discriminant Analysis (LDA), is classified by our hierarchical artificial neural network classifier: in the lower level of the classifier, a state of an activity is recognized based on the statistical and spectral features; in the upper level, an activity is recognized with a set of augmented features including autoregressive (AR) coefficients, signal magnitude area (SMA), and tilt angles (TA). Upon the recognition of each activity, we further estimate exercise information such as energy expenditure based on Metabolic Equivalents (METS), step count, walking distance, walking speed, activity duration, etc. Our PLL system functions in real-time and all information generated from our system is archived in a daily-log database. By testing our system on seven different daily activities, we have obtained an average accuracy of 84.8% in activity recognition and generated their relative exercise information.
记录日常生活活动的个人生活日志(PLL)是一种用于泛在生活护理和电子健康服务的新兴技术。在本文中,我们提出了一种基于加速度计的个人生活日志系统,该系统能够进行人类活动分类并生成运动信息。在我们的系统中,我们使用三轴加速度计和实时活动识别方案,其中通过线性判别分析(LDA)处理的一组加速度计信号增强特征,由我们的分层人工神经网络分类器进行分类:在分类器的较低级别,基于统计和频谱特征识别活动状态;在较高级别,通过包括自回归(AR)系数、信号幅度面积(SMA)和倾斜角度(TA)在内的一组增强特征识别活动。在识别出每项活动后,我们进一步估计运动信息,如基于代谢当量(METS)的能量消耗、步数、步行距离、步行速度、活动持续时间等。我们的PLL系统实时运行,系统生成的所有信息都存档在每日日志数据库中。通过在七种不同的日常活动上测试我们的系统得出,我们在活动识别方面获得了平均准确率为84.8%的结果,并生成了相应的运动信息。