Title :
An Unsupervised Approach for Automatic Activity Recognition Based on Hidden Markov Model Regression
Author :
Trabelsi, D. ; Mohammed, Sabah ; Chamroukhi, Faicel ; Oukhellou, Latifa ; Amirat, Yacine
Author_Institution :
LISSI, Univ. Paris-Est Creteil (UPEC), Vitry-Sur-Seine, France
Abstract :
Using supervised machine learning approaches to recognize human activities from on-body wearable accelerometers generally requires a large amount of labeled data. When ground truth information is not available, too expensive, time consuming or difficult to collect, one has to rely on unsupervised approaches. This paper presents a new unsupervised approach for human activity recognition from raw acceleration data measured using inertial wearable sensors. The proposed method is based upon joint segmentation of multidimensional time series using a Hidden Markov Model (HMM) in a multiple regression context. The model is learned in an unsupervised framework using the Expectation-Maximization (EM) algorithm where no activity labels are needed. The proposed method takes into account the sequential appearance of the data. It is therefore adapted for the temporal acceleration data to accurately detect the activities. It allows both segmentation and classification of the human activities. Experimental results are provided to demonstrate the efficiency of the proposed approach with respect to standard supervised and unsupervised classification approaches.
Keywords :
acceleration measurement; accelerometers; biomedical equipment; biomedical measurement; body sensor networks; expectation-maximisation algorithm; gait analysis; hidden Markov models; learning (artificial intelligence); medical signal processing; patient monitoring; pattern classification; regression analysis; signal classification; HMM; acceleration data classification; automatic activity recognition; expectation-maximization algorithm; health-monitoring context; hidden Markov model regression; human activity classification; human activity recognition; human activity segmentation; inertial wearable sensors; joint segmentation; left ankle; multidimensional time series; multiple regression context; on-body wearable accelerometers; on-body wearable sensors; physical human activities; raw acceleration data measurement; sequential data appearance; supervised machine learning approach; temporal acceleration data; Activity recognition; hidden Markov model (HMM); multivariate regression; unsupervised learning; wearable computing;
Journal_Title :
Automation Science and Engineering, IEEE Transactions on
DOI :
10.1109/TASE.2013.2256349