Sensor-Based Datasets for Human Activity Recognition – A Systematic Review of Literature
The research area of ambient assisted living has led to the development of activity recognition systems (ARS) based on human activity recognition (HAR). These systems improve the quality of life and the health care of the elderly and dependent people. However, before making them available to end use...
Main Authors: | , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
IEEE
2018-01-01
|
Series: | IEEE Access |
Subjects: | |
Online Access: | https://ieeexplore.ieee.org/document/8478653/ |
id |
doaj-caf5a887760b40cfb2f9c88461ee0572 |
---|---|
record_format |
Article |
spelling |
doaj-caf5a887760b40cfb2f9c88461ee05722021-03-29T21:40:11ZengIEEEIEEE Access2169-35362018-01-016591925921010.1109/ACCESS.2018.28735028478653Sensor-Based Datasets for Human Activity Recognition – A Systematic Review of LiteratureEmiro De-La-Hoz-Franco0Paola Ariza-Colpas1Javier Medina Quero2Macarena Espinilla3https://orcid.org/0000-0003-1118-7782Department of Computer Science and Electronics, Universidad de la Costa–CUC, Barranquilla, ColombiaDepartment of Computer Science and Electronics, Universidad de la Costa–CUC, Barranquilla, ColombiaDepartment of Computer Science, University of Jaén, Campus Las Lagunillas, Jaén, SpainDepartment of Computer Science, University of Jaén, Campus Las Lagunillas, Jaén, SpainThe research area of ambient assisted living has led to the development of activity recognition systems (ARS) based on human activity recognition (HAR). These systems improve the quality of life and the health care of the elderly and dependent people. However, before making them available to end users, it is necessary to evaluate their performance in recognizing activities of daily living, using data set benchmarks in experimental scenarios. For that reason, the scientific community has developed and provided a huge amount of data sets for HAR. Therefore, identifying which ones to use in the evaluation process and which techniques are the most appropriate for prediction of HAR in a specific context is not a trivial task and is key to further progress in this area of research. This work presents a systematic review of the literature of the sensor-based data sets used to evaluate ARS. On the one hand, an analysis of different variables taken from indexed publications related to this field was performed. The sources of information are journals, proceedings, and books located in specialized databases. The analyzed variables characterize publications by year, database, type, quartile, country of origin, and destination, using scientometrics, which allowed identification of the data set most used by researchers. On the other hand, the descriptive and functional variables were analyzed for each of the identified data sets: occupation, annotation, approach, segmentation, representation, feature selection, balancing and addition of instances, and classifier used for recognition. This paper provides an analysis of the sensor-based data sets used in HAR to date, identifying the most appropriate dataset to evaluate ARS and the classification techniques that generate better results.https://ieeexplore.ieee.org/document/8478653/Ambient assisted living–AALhuman activity recognition–HARactivities of daily living–ADLactivity recognition systems–ARSdataset |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Emiro De-La-Hoz-Franco Paola Ariza-Colpas Javier Medina Quero Macarena Espinilla |
spellingShingle |
Emiro De-La-Hoz-Franco Paola Ariza-Colpas Javier Medina Quero Macarena Espinilla Sensor-Based Datasets for Human Activity Recognition – A Systematic Review of Literature IEEE Access Ambient assisted living–AAL human activity recognition–HAR activities of daily living–ADL activity recognition systems–ARS dataset |
author_facet |
Emiro De-La-Hoz-Franco Paola Ariza-Colpas Javier Medina Quero Macarena Espinilla |
author_sort |
Emiro De-La-Hoz-Franco |
title |
Sensor-Based Datasets for Human Activity Recognition – A Systematic Review of Literature |
title_short |
Sensor-Based Datasets for Human Activity Recognition – A Systematic Review of Literature |
title_full |
Sensor-Based Datasets for Human Activity Recognition – A Systematic Review of Literature |
title_fullStr |
Sensor-Based Datasets for Human Activity Recognition – A Systematic Review of Literature |
title_full_unstemmed |
Sensor-Based Datasets for Human Activity Recognition – A Systematic Review of Literature |
title_sort |
sensor-based datasets for human activity recognition – a systematic review of literature |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2018-01-01 |
description |
The research area of ambient assisted living has led to the development of activity recognition systems (ARS) based on human activity recognition (HAR). These systems improve the quality of life and the health care of the elderly and dependent people. However, before making them available to end users, it is necessary to evaluate their performance in recognizing activities of daily living, using data set benchmarks in experimental scenarios. For that reason, the scientific community has developed and provided a huge amount of data sets for HAR. Therefore, identifying which ones to use in the evaluation process and which techniques are the most appropriate for prediction of HAR in a specific context is not a trivial task and is key to further progress in this area of research. This work presents a systematic review of the literature of the sensor-based data sets used to evaluate ARS. On the one hand, an analysis of different variables taken from indexed publications related to this field was performed. The sources of information are journals, proceedings, and books located in specialized databases. The analyzed variables characterize publications by year, database, type, quartile, country of origin, and destination, using scientometrics, which allowed identification of the data set most used by researchers. On the other hand, the descriptive and functional variables were analyzed for each of the identified data sets: occupation, annotation, approach, segmentation, representation, feature selection, balancing and addition of instances, and classifier used for recognition. This paper provides an analysis of the sensor-based data sets used in HAR to date, identifying the most appropriate dataset to evaluate ARS and the classification techniques that generate better results. |
topic |
Ambient assisted living–AAL human activity recognition–HAR activities of daily living–ADL activity recognition systems–ARS dataset |
url |
https://ieeexplore.ieee.org/document/8478653/ |
work_keys_str_mv |
AT emirodelahozfranco sensorbaseddatasetsforhumanactivityrecognitionx2013asystematicreviewofliterature AT paolaarizacolpas sensorbaseddatasetsforhumanactivityrecognitionx2013asystematicreviewofliterature AT javiermedinaquero sensorbaseddatasetsforhumanactivityrecognitionx2013asystematicreviewofliterature AT macarenaespinilla sensorbaseddatasetsforhumanactivityrecognitionx2013asystematicreviewofliterature |
_version_ |
1724192559620685824 |