Human Activity Recognition Using Smartphones
About
Human Activity Recognition database built from the recordings of 30 subjects performing activities of daily living (ADL) while carrying a waist-mounted smartphone with embedded inertial sensors.
The experiments have been carried out with a group of 30 volunteers within an age bracket of 19-48 years. Each person performed six activities (WALKING, WALKING_UPSTAIRS, WALKING_DOWNSTAIRS, SITTING, STANDING, LAYING) wearing a smartphone (Samsung Galaxy S II) on the waist. Using its embedded accelerometer and gyroscope, we captured 3-axial linear acceleration and 3-axial angular velocity at a constant rate of 50Hz. The experiments have been video-recorded to label the data manually. The obtained dataset has been randomly partitioned into two sets, where 70% of the volunteers was selected for generating the training data and 30% the test data.
The sensor signals (accelerometer and gyroscope) were pre-processed by applying noise filters and then sampled in fixed-width sliding windows of 2.56 sec and 50% overlap (128 readings/window). The sensor acceleration signal, which has gravitational and body motion components, was separated using a Butterworth low-pass filter into body acceleration and gravity. The gravitational force is assumed to have only low frequency components, therefore a filter with 0.3 Hz cutoff frequency was used. From each window, a vector of features was obtained by calculating variables from the time and frequency domain.
Check the README.txt file for further details about this dataset.
A video of the experiment including an example of the 6 recorded activities with one of the participants can be seen in the following link: http://www.youtube.com/watch?v=XOEN9W05_4A
An updated version of this dataset can be found at http://archive.ics.uci.edu/ml/datasets/Smartphone-Based+Recognition+of+Human+Activities+and+Postural+Transitions. It includes labels of postural transitions between activities and also the full raw inertial signals instead of the ones pre-processed into windows.
Subject Area
Computer Science
Instances
10,299
Features
561
Data Types
Multivariate
Tasks
Classification, Clustering
Feature Types
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Features
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Introductory Paper
A Public Domain Dataset for Human Activity Recognition using Smartphones
D. Anguita, A. Ghio, L. Oneto, X. Parra, Jorge Luis Reyes-Ortiz. 2013.
The European Symposium on Artificial Neural Networks
Additional Metadata
Keywords
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Authors
Jorge Reyes-Ortiz
Davide Anguita
Alessandro Ghio
Luca Oneto
Xavier Parra
Year Created
2013
License
CC BY 4.0