Postural Transitions (PTs) are transitory movements that describe the change of state from one static posture to another. In sev- eral Human Activity Recognition (HAR) systems, these transitions cannot be disregarded due to their noticeable incidence with respect to the duration of other Basic Activities (BAs). In this work, we propose an online smartphone-based HAR system which deals with the occurrence of postural transitions. If treated properly, the system accuracy improves by avoiding fluctuations in the classifier. The method consists of concurrently exploiting Support Vector Machines (SVMs) and temporal filters of activity probability estimations within a limited time window. We present the benefits of this approach through experiments over a new HAR dataset, which we also make publicly available. We also show the new approach performs better than a previous baseline system, where PTs were not taken into account.

Human Activity Recognition on Smartphones with Awareness of Basic Activities and Postural Transitions

REYES ORTIZ, JORGE LUIS;ONETO, LUCA;GHIO, ALESSANDRO;ANGUITA, DAVIDE;
2014-01-01

Abstract

Postural Transitions (PTs) are transitory movements that describe the change of state from one static posture to another. In sev- eral Human Activity Recognition (HAR) systems, these transitions cannot be disregarded due to their noticeable incidence with respect to the duration of other Basic Activities (BAs). In this work, we propose an online smartphone-based HAR system which deals with the occurrence of postural transitions. If treated properly, the system accuracy improves by avoiding fluctuations in the classifier. The method consists of concurrently exploiting Support Vector Machines (SVMs) and temporal filters of activity probability estimations within a limited time window. We present the benefits of this approach through experiments over a new HAR dataset, which we also make publicly available. We also show the new approach performs better than a previous baseline system, where PTs were not taken into account.
2014
978-3-319-11178-0
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11567/810115
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