Human Activity Recognition Using Deep Models and Its Analysis from Domain Adaptation Perspective
Document Type
Conference Proceeding
Source of Publication
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
Publication Date
1-1-2019
Abstract
© 2019, Springer Nature Switzerland AG. Human activity recognition (HAR) is a broad area of research which solves the problem of determining a user’s activity from a set of observations recorded on video or low-level sensors (accelerometer, gyroscope, etc.) HAR has important applications in medical care and entertainment. In this paper, we address sensor-based HAR, because it could be deployed on a smartphone and eliminates the need to use additional equipment. Using machine learning methods for HAR is common. However, such, methods are vulnerable to changes in the domain of training and test data. More specifically, a model trained on data collected by one user loses accuracy when utilised by another user, because of the domain gap (differences in devices and movement pattern results in differences in sensors’ readings.) Despite significant results achieved in HAR, it is not well-investigated from domain adaptation (DA) perspective. In this paper, we implement a CNN-LSTM based architecture along with several classical machine learning methods for HAR and conduct a series of cross-domain tests. The result of this work is a collection of statistics on the performance of our model under DA task. We believe that our findings will serve as a foundation for future research in solving DA problem for HAR.
DOI Link
ISBN
9783030298517
ISSN
Publisher
Springer
Volume
11771 LNCS
First Page
189
Last Page
202
Disciplines
Computer Sciences
Keywords
Domain adaptation, Human activity recognition
Scopus ID
Recommended Citation
Gurov, Nikita; Khan, Adil; Hussain, Rasheed; and Khattak, Asad, "Human Activity Recognition Using Deep Models and Its Analysis from Domain Adaptation Perspective" (2019). All Works. 1893.
https://zuscholars.zu.ac.ae/works/1893
Indexed in Scopus
yes
Open Access
no