scholarly journals Activity Recognition from User-Annotated Acceleration Data

Author(s):  
Ling Bao ◽  
Stephen S. Intille
Author(s):  
Donghui Mao ◽  
Xinyu Lin ◽  
Yiyun Liu ◽  
Mingrui Xu ◽  
Guoxiang Wang ◽  
...  

2017 ◽  
Vol 7 (10) ◽  
pp. 1101 ◽  
Author(s):  
Daniela Micucci ◽  
Marco Mobilio ◽  
Paolo Napoletano

IEEE Access ◽  
2021 ◽  
pp. 1-1
Author(s):  
Sylvain Iloga ◽  
Alexandre Bordat ◽  
Julien Le Kernec ◽  
Olivier Romain

Author(s):  
Daniela Micucci ◽  
Marco Mobilio ◽  
Paolo Napoletano

Smartphones, smartwatches, fitness trackers, and ad-hoc wearable devices are being increasingly used to monitor human activities. Data acquired by the hosted sensors are usually processed by machine-learning-based algorithms to classify human activities. The success of those algorithms mostly depends on the availability of training (labeled) data that, if made publicly available, would allow researchers to make objective comparisons between techniques. Nowadays, publicly available data sets are few, often contain samples from subjects with too similar characteristics, and very often lack of specific information so that is not possible to select subsets of samples according to specific criteria. In this article, we present a new smartphone accelerometer dataset designed for activity recognition. The dataset includes 11,771 activities performed by 30 subjects of ages ranging from 18 to 60 years. Activities are divided in 17 fine grained classes grouped in two coarse grained classes: 9 types of activities of daily living (ADL) and 8 types of falls. The dataset has been stored to include all the information useful to select samples according to different criteria, such as the type of ADL performed, the age, the gender, and so on. Finally, the dataset has been benchmarked with two different classifiers and with different configurations. The best results are achieved with k-NN classifying ADLs only, considering personalization, and with both windows of 51 and 151 samples.


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