Application of Machine Learning Approaches for Classifying Sitting Posture Based on Force and Acceleration Sensors

Joint Authors

Zemp, Roland
Taylor, William R.
Tanadini, Matteo
Plüss, Stefan
Schnüriger, Karin
Singh, Navrag B.
Lorenzetti, Silvio

Source

BioMed Research International

Issue

Vol. 2016, Issue 2016 (31 Dec. 2016), pp.1-9, 9 p.

Publisher

Hindawi Publishing Corporation

Publication Date

2016-10-27

Country of Publication

Egypt

No. of Pages

9

Main Subjects

Medicine

Abstract EN

Occupational musculoskeletal disorders, particularly chronic low back pain (LBP), are ubiquitous due to prolonged static sitting or nonergonomic sitting positions.

Therefore, the aim of this study was to develop an instrumented chair with force and acceleration sensors to determine the accuracy of automatically identifying the user’s sitting position by applying five different machine learning methods (Support Vector Machines, Multinomial Regression, Boosting, Neural Networks, and Random Forest).

Forty-one subjects were requested to sit four times in seven different prescribed sitting positions (total 1148 samples).

Sixteen force sensor values and the backrest angle were used as the explanatory variables (features) for the classification.

The different classification methods were compared by means of a Leave-One-Out cross-validation approach.

The best performance was achieved using the Random Forest classification algorithm, producing a mean classification accuracy of 90.9% for subjects with which the algorithm was not familiar.

The classification accuracy varied between 81% and 98% for the seven different sitting positions.

The present study showed the possibility of accurately classifying different sitting positions by means of the introduced instrumented office chair combined with machine learning analyses.

The use of such novel approaches for the accurate assessment of chair usage could offer insights into the relationships between sitting position, sitting behaviour, and the occurrence of musculoskeletal disorders.

American Psychological Association (APA)

Zemp, Roland& Tanadini, Matteo& Plüss, Stefan& Schnüriger, Karin& Singh, Navrag B.& Taylor, William R.…[et al.]. 2016. Application of Machine Learning Approaches for Classifying Sitting Posture Based on Force and Acceleration Sensors. BioMed Research International،Vol. 2016, no. 2016, pp.1-9.
https://search.emarefa.net/detail/BIM-1098307

Modern Language Association (MLA)

Zemp, Roland…[et al.]. Application of Machine Learning Approaches for Classifying Sitting Posture Based on Force and Acceleration Sensors. BioMed Research International No. 2016 (2016), pp.1-9.
https://search.emarefa.net/detail/BIM-1098307

American Medical Association (AMA)

Zemp, Roland& Tanadini, Matteo& Plüss, Stefan& Schnüriger, Karin& Singh, Navrag B.& Taylor, William R.…[et al.]. Application of Machine Learning Approaches for Classifying Sitting Posture Based on Force and Acceleration Sensors. BioMed Research International. 2016. Vol. 2016, no. 2016, pp.1-9.
https://search.emarefa.net/detail/BIM-1098307

Data Type

Journal Articles

Language

English

Notes

Includes bibliographical references

Record ID

BIM-1098307