View Wearable Accelerometers Activity (public)
























- Summary
A dataset with 5 classes (sitting-down, standing-up, standing, walking, and sitting) collected on 8 hours of activities of 4 healthy subjects.
- License
- CC0
- Dependencies
- Wearable Accelerometers Activity
- Tags
- Accelerometer action-recognition Activity-Recognition Classification PUC-Rio Scalar Wearable
- Attribute Types
- Download
- dat (3.9 KB)
You can edit this item to add more meta information and make use of the site's premium features.
- Original Data Format
- dat
- Name
- Version mldata
- Comment
- Names
- Data (first 10 data points)
Format not HDF5, zip or tar archive. Will parse the following text: Please, cite this publication to refer this dataset and literature review Ugulino, W.; Cardador, D.; Vega, K.; Velloso, E.; Milidiu, R.; Fuks, H. Wearable Computing: Accelerometers' Data Classification of Body Postures and Movements. Proceedings of 21st Brazilian Symposium on Artificial Intelligence. Advances in Artificial Intelligence - SBIA 2012. In: Lecture Notes in Computer Science. pp.52-61. Curitiba, PR: Springer Berlin / Heidelberg, 2012. ISBN 978-3-642-34458-9. DOI: 10.1007/978-3-642-34459-6_6. Read more: http://groupware.les.inf.puc-rio.br/har#ixzz2PyRdbAfA Example data below... complete dataset available at the URL above
- Description
Human Activity Recognition - HAR - has emerged as a key research area in the last years and is gaining increasing attention by the pervasive computing research community, especially for the development of context-aware systems. There are many potential applications for HAR, like: elderly monitoring, life log systems for monitoring energy expenditure and for supporting weight-loss programs, and digital assistants for weight lifting exercises.
Read more: http://groupware.les.inf.puc-rio.br/har#ixzz2aUaBROdz
HAR Dataset for benchmarking We propose a dataset with 5 classes (sitting-down, standing-up, standing, walking, and sitting) collected on 8 hours of activities of 4 healthy subjects. We also established a baseline performance index. You can download the dataset here (please, drop us a line (wugulino at inf dot puc-rio dot br) about your research and how we can contribute to your benchmarking).
This dataset is licensed under the Creative Commons (CC BY-SA)
Important: you are free to use this dataset for any purpose. This dataset is licensed under the Creative Commons license (CC BY-SA). The CC BY-SA license means you can remix, tweak, and build upon this work even for commercial purposes, as long as you credit the authors of the original work and you license your new creations under the identical terms we are licensing to you. This license is often compared to "copyleft" free and open source software licenses. All new works based on this dataset will carry the same license, so any derivatives will also allow commercial use.
- URLs
- http://groupware.les.inf.puc-rio.br/har
- Publications
- Data Source
- http://groupware.les.inf.puc-rio.br/har#ixzz2aUaH8865 Ugulino, W.; Cardador, D.; Vega, K.; Velloso, E.; Milidiu, R.; Fuks, H. Wearable Computing: Accelerometers' Data Classification of Body Postures and Movements. Proceedings of 21st Brazilian Symposium on Artificial Intelligence. Advances in Artificial Intelligence - SBIA 2012. In: Lecture Notes in Computer Science. , pp. 52-61. Curitiba, PR: Springer Berlin / Heidelberg, 2012. ISBN 978-3-642-34458-9. DOI: 10.1007/978-3-642-34459-6_6.
- Measurement Details
- Usage Scenario
- revision 2
- by ugulino on 2013-07-30 04:35
- revision 3
- by ugulino on 2013-07-30 04:38
No one has posted any comments yet. Perhaps you would like to be the first?
Leave a comment
To post a comment, please sign in.This item was downloaded 2861 times and viewed 1561 times.
No Tasks yet on dataset Wearable Accelerometers Activity
Submit a new Task for this Data itemDisclaimer
We are acting in good faith to make datasets submitted for the use of the scientific community available to everybody, but if you are a copyright holder and would like us to remove a dataset please inform us and we will do it as soon as possible.
Acknowledgements
This project is supported by PASCAL (Pattern Analysis, Statistical Modelling and Computational Learning)
http://www.pascal-network.org/.