Title
Smartphone-Based Patients' Activity Recognition by Using a Self-Learning Scheme for Medical Monitoring.
Abstract
Smartphone based activity recognition has recently received remarkable attention in various applications of mobile health such as safety monitoring, fitness tracking, and disease prediction. To achieve more accurate and simplified medical monitoring, this paper proposes a self-learning scheme for patients' activity recognition, in which a patient only needs to carry an ordinary smartphone that contains common motion sensors. After the real-time data collection though this smartphone, we preprocess the data using coordinate system transformation to eliminate phone orientation influence. A set of robust and effective features are then extracted from the preprocessed data. Because a patient may inevitably perform various unpredictable activities that have no apriori knowledge in the training dataset, we propose a self-learning activity recognition scheme. The scheme determines whether there are apriori training samples and labeled categories in training pools that well match with unpredictable activity data. If not, it automatically assembles these unpredictable samples into different clusters and gives them new category labels. These clustered samples combined with the acquired new category labels are then merged into the training dataset to reinforce recognition ability of the self-learning model. In experiments, we evaluate our scheme using the data collected from two postoperative patient volunteers, including six labeled daily activities as the initial apriori categories in the training pool. Experimental results demonstrate that the proposed self-learning scheme for activity recognition works very well for most cases. When there exist several types of unseen activities without any apriori information, the accuracy reaches above 80 % after the self-learning process converges.
Year
DOI
Venue
2016
10.1007/s10916-016-0497-2
J. Medical Systems
Keywords
Field
DocType
Activity recognition,Self-learning,Smartphone
Telemedicine,Data collection,Data mining,Activity recognition,Computer science,Computer security,A priori and a posteriori,Phone,Motion sensors,Safety monitoring,Artificial intelligence,Machine learning
Journal
Volume
Issue
ISSN
40
6
1573-689X
Citations 
PageRank 
References 
6
0.52
23
Authors
6
Name
Order
Citations
PageRank
Junqi Guo16115.07
Xi Zhou270.89
Yunchuan Sun353454.06
Gong Ping460.52
Guoxing Zhao570.89
Zhuorong Li691.57