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      A Survey of Online Activity Recognition Using Mobile Phones

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          Abstract

          Physical activity recognition using embedded sensors has enabled many context-aware applications in different areas, such as healthcare. Initially, one or more dedicated wearable sensors were used for such applications. However, recently, many researchers started using mobile phones for this purpose, since these ubiquitous devices are equipped with various sensors, ranging from accelerometers to magnetic field sensors. In most of the current studies, sensor data collected for activity recognition are analyzed offline using machine learning tools. However, there is now a trend towards implementing activity recognition systems on these devices in an online manner, since modern mobile phones have become more powerful in terms of available resources, such as CPU, memory and battery. The research on offline activity recognition has been reviewed in several earlier studies in detail. However, work done on online activity recognition is still in its infancy and is yet to be reviewed. In this paper, we review the studies done so far that implement activity recognition systems on mobile phones and use only their on-board sensors. We discuss various aspects of these studies. Moreover, we discuss their limitations and present various recommendations for future research.

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          Sensor-Based Activity Recognition

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            Activity identification using body-mounted sensors--a review of classification techniques.

            With the advent of miniaturized sensing technology, which can be body-worn, it is now possible to collect and store data on different aspects of human movement under the conditions of free living. This technology has the potential to be used in automated activity profiling systems which produce a continuous record of activity patterns over extended periods of time. Such activity profiling systems are dependent on classification algorithms which can effectively interpret body-worn sensor data and identify different activities. This article reviews the different techniques which have been used to classify normal activities and/or identify falls from body-worn sensor data. The review is structured according to the different analytical techniques and illustrates the variety of approaches which have previously been applied in this field. Although significant progress has been made in this important area, there is still significant scope for further work, particularly in the application of advanced classification techniques to problems involving many different activities.
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              Fusion of Smartphone Motion Sensors for Physical Activity Recognition

              For physical activity recognition, smartphone sensors, such as an accelerometer and a gyroscope, are being utilized in many research studies. So far, particularly, the accelerometer has been extensively studied. In a few recent studies, a combination of a gyroscope, a magnetometer (in a supporting role) and an accelerometer (in a lead role) has been used with the aim to improve the recognition performance. How and when are various motion sensors, which are available on a smartphone, best used for better recognition performance, either individually or in combination? This is yet to be explored. In order to investigate this question, in this paper, we explore how these various motion sensors behave in different situations in the activity recognition process. For this purpose, we designed a data collection experiment where ten participants performed seven different activities carrying smart phones at different positions. Based on the analysis of this data set, we show that these sensors, except the magnetometer, are each capable of taking the lead roles individually, depending on the type of activity being recognized, the body position, the used data features and the classification method employed (personalized or generalized). We also show that their combination only improves the overall recognition performance when their individual performances are not very high, so that there is room for performance improvement. We have made our data set and our data collection application publicly available, thereby making our experiments reproducible.
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                Author and article information

                Journal
                Sensors (Basel)
                Sensors (Basel)
                Sensors (Basel, Switzerland)
                MDPI
                1424-8220
                January 2015
                19 January 2015
                : 15
                : 1
                : 2059-2085
                Affiliations
                [1 ] Pervasive Systems Group, Department of Computer Science, Zilverling Building, PO-Box 217, 7500 AE Enschede, The Netherlands; E-Mails: stephan@ 123456inertia-technology.com (S.B.); hans.scholten@ 123456utwente.nl (H.S.); p.j.m.havinga@ 123456utwente.nl (P.J.M.H.)
                [2 ] Department of Computer Engineering, Galatasaray University, Ortakoy, Istanbul 34349, Turkey; E-Mail: odincel@ 123456gsu.edu.tr
                Author notes

                Academic Editor: Gianluca Paravati

                [* ] Author to whom correspondence should be addressed; E-Mail: m.shoaib@ 123456utwente.nl ; Tel.: +31-53-489-3028; Fax: +31-53-489-4590.
                Article
                sensors-15-02059
                10.3390/s150102059
                4327117
                25608213
                08f1460d-04e9-43ad-8bcc-6dcab9010dfd
                © 2015 by the authors; licensee MDPI, Basel, Switzerland.

                This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution license ( http://creativecommons.org/licenses/by/4.0/).

                History
                : 04 November 2014
                : 08 January 2015
                Categories
                Review

                Biomedical engineering
                online activity recognition,real time,smartphones,mobile phone,mobile phone sensing,human activity recognition review,survey,accelerometer

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