XHAR: Deep Domain Adaptation for Human Activity Recognition with Smart Devices

Author(s):  
Zhijun Zhou ◽  
Yingtian Zhang ◽  
Xiaojing Yu ◽  
Panlong Yang ◽  
Xiang-Yang Li ◽  
...  
2021 ◽  
pp. 1-1
Author(s):  
Sungtae An ◽  
Alessio Medda ◽  
Michael N. Sawka ◽  
Clayton J. Hutto ◽  
Mindy L. Millard-Stafford ◽  
...  

Technologies ◽  
2020 ◽  
Vol 8 (4) ◽  
pp. 55
Author(s):  
Evaggelos Spyrou ◽  
Eirini Mathe ◽  
Georgios Pikramenos ◽  
Konstantinos Kechagias ◽  
Phivos Mylonas

Recent advances in big data systems and databases have made it possible to gather raw unlabeled data at unprecedented rates. However, labeling such data constitutes a costly and timely process. This is especially true for video data, and in particular for human activity recognition (HAR) tasks. For this reason, methods for reducing the need of labeled data for HAR applications have drawn significant attention from the research community. In particular, two popular approaches developed to address the above issue are data augmentation and domain adaptation. The former attempts to leverage problem-specific, hand-crafted data synthesizers to augment the training dataset with artificial labeled data instances. The latter attempts to extract knowledge from distinct but related supervised learning tasks for which labeled data is more abundant than the problem at hand. Both methods have been extensively studied and used successfully on various tasks, but a comprehensive comparison of the two has not been carried out in the context of video data HAR. In this work, we fill this gap by providing ample experimental results comparing data augmentation and domain adaptation techniques on a cross-viewpoint, human activity recognition task from pose information.


2020 ◽  
Author(s):  
Junhao Shi ◽  
Decheng Zuo ◽  
Zhan Zhang ◽  
Daohua Pan

Abstract Smartphone-based human activity recognition has become a considerable research field as a subdomains of pattern recognition and pervasive computing. With the increasing popularity of smartphones, HAR has prominent applications in number of fields such as health care, education, entertainment and etc. Smart devices have a huge advantage in convenience as the main acquisition and processing equipment, but the battery life of smartphone and other resources are limited for long-duration tasks. In this paper, we propose a lightweight HAR system. The system realizes HAR algorithm with deep learning algorithm. Beyond that, we introduce a clustering-center based pre-classification strategy to reduce the call frequency of the DL model. Meanwhile, we add a sampling frequency control mechanism to the inertial sensor. The goal of the whole system is to achieve low power consumption and time delay. According to the final experiment results, the energy consumption reduces about 49% and time delay reduces about 55% while the overall recognition accuracy only suffers about 10% reduction.


Sign in / Sign up

Export Citation Format

Share Document