2014
DOI: 10.3390/s140305725
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Analyzing Body Movements within the Laban Effort Framework Using a Single Accelerometer

Abstract: This article presents a study on analyzing body movements by using a single accelerometer sensor. The investigated categories of body movements belong to the Laban Effort Framework: Strong—Light, Free—Bound and Sudden—Sustained. All body movements were represented by a set of activities used for data collection. The calculated accuracy of detecting the body movements was based on collecting data from a single wireless tri-axial accelerometer sensor. Ten healthy subjects collected data from three body locations… Show more

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Cited by 23 publications
(12 citation statements)
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“…Movement is sensed using Laban Movement analysis of accelerometer data from the wrist-worn device. The wrist is perhaps the best place for a single accelerometer to detect movement intensity [12]. Movement analysis is complemented with heart rate data for detecting activity intensity.…”
Section: A Cognitive Endurance Monitoring Platformmentioning
confidence: 99%
“…Movement is sensed using Laban Movement analysis of accelerometer data from the wrist-worn device. The wrist is perhaps the best place for a single accelerometer to detect movement intensity [12]. Movement analysis is complemented with heart rate data for detecting activity intensity.…”
Section: A Cognitive Endurance Monitoring Platformmentioning
confidence: 99%
“…The use of a single sensor is important to simplify the system, so it does not create any burden for the caregivers, or for the person with dementia [10]. Having multiple sensors will increase the complexity of the monitoring system and make it more cumbersome for the users [11]. While many advanced machine learning methods have been used to measure stress using multiple information sources [12], we aim for a more straightforward method based on such limited input.…”
Section: Introductionmentioning
confidence: 99%
“…The collected data correspond to acceleration values along x, y, and z axis with a sampling frequency of 50Hz, which is five times larger than the frequency considered to be sufficient for detecting daily activities from accelerometer data (10Hz) [10], [11], [12]. …”
Section: Data Collectionmentioning
confidence: 99%