Information gain-based metric for recognizing transitions in human activities

被引:36
作者
Sadri, Amin [1 ]
Ren, Yongli [1 ]
Salim, Flora D. [1 ]
机构
[1] RMIT Univ, Sch Comp Sci & Informat Technol, Melbourne, Vic, Australia
关键词
Human activity recognition; Temporal segmentation; Information gain; Routine discovery; ACTIVITY RECOGNITION; MODEL SELECTION; SEGMENTATION;
D O I
10.1016/j.pmcj.2017.01.003
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
This paper aims to observe and recognize transition times, when human activities change. No generic method has been proposed for extracting transition times at different levels of activity granularity. Existing work in human behavior analysis and activity recognition has mainly used predefined sliding windows or fixed segments, either at low-level, such as standing or walking, or high-level, such as dining or commuting to work. We present an Information Gain-based Temporal Segmentation method (IGTS), an unsupervised segmentation technique, to find the transition times in human activities and daily routines, from heterogeneous sensor data. The proposed IGTS method is applicable for low-level activities, where each segment captures a single activity, such as walking, that is going to be recognized or predicted, and also for high-level activities. The heterogeneity of sensor data is dealt with a data transformation stage. The generic method has been thoroughly evaluated on a variety of labeled and unlabeled activity recognition and routine datasets from smartphones and device-free infrastructures. The experiment results demonstrate the robustness of the method, as all segments of low- and high-level activities can be captured from different datasets with minimum error and high computational efficiency. (C) 2017 Elsevier B.V. All rights reserved.
引用
收藏
页码:92 / 109
页数:18
相关论文
共 67 条
[1]  
Adams Ryan Prescott, 2007, Bayesian online changepoint detection
[2]  
[Anonymous], 2014, P 2014 ACM SIGGRAPHE
[3]   Window Size Impact in Human Activity Recognition [J].
Banos, Oresti ;
Galvez, Juan-Manuel ;
Damas, Miguel ;
Pomares, Hector ;
Rojas, Ignacio .
SENSORS, 2014, 14 (04) :6474-6499
[4]   Activity recognition from user-annotated acceleration data [J].
Bao, L ;
Intille, SS .
PERVASIVE COMPUTING, PROCEEDINGS, 2004, 3001 :1-17
[5]   Connect the Dots by Understanding User Status and Transitions [J].
Bao, Xuan ;
Shen, Yilin ;
Gong, Neil Zhenqiang ;
Jin, Hongxia ;
Hu, Bing .
PROCEEDINGS OF THE 2014 ACM INTERNATIONAL JOINT CONFERENCE ON PERVASIVE AND UBIQUITOUS COMPUTING (UBICOMP'14 ADJUNCT), 2014, :361-366
[6]  
Baxter R. A., 1996, Algorithmic Learning Theory. 7th International Workshop, ALT '96. Proceedings, P83
[7]   ON THE APPROXIMATION OF CURVES BY LINE SEGMENTS USING DYNAMIC PROGRAMMING [J].
BELLMAN, R .
COMMUNICATIONS OF THE ACM, 1961, 4 (06) :284-284
[8]   Multiple changepoint fitting via quasilikelihood, with application to DNA sequence segmentation [J].
Braun, JV ;
Braun, RK ;
Müller, HG .
BIOMETRIKA, 2000, 87 (02) :301-314
[9]   Smart-surface: Large scale textile pressure sensors arrays for activity recognition [J].
Cheng, Jingyuan ;
Sundholm, Mathias ;
Zhou, Bo ;
Hirsch, Marco ;
Lukowicz, Paul .
PERVASIVE AND MOBILE COMPUTING, 2016, 30 :97-112
[10]  
Cheng W., 2015, KNOWL INF SYST, P1