Transfer Learning for Human Activity Recognition Using Representational Analysis of Neural Networks

Author:

An Sizhe1ORCID,Bhat Ganapati2ORCID,Gumussoy Suat3ORCID,Ogras Umit1ORCID

Affiliation:

1. University of Wisconsin-Madison, Wisconsin

2. Washington State University, Pullman, Washington

3. Siemens Corporate Technology, Princeton, NJ, USA

Abstract

Human activity recognition (HAR) has increased in recent years due to its applications in mobile health monitoring, activity recognition, and patient rehabilitation. The typical approach is training a HAR classifier offline with known users and then using the same classifier for new users. However, the accuracy for new users can be low with this approach if their activity patterns are different than those in the training data. At the same time, training from scratch for new users is not feasible for mobile applications due to the high computational cost and training time. To address this issue, we propose a HAR transfer learning framework with two components. First, a representational analysis reveals common features that can transfer across users and user-specific features that need to be customized. Using this insight, we transfer the reusable portion of the offline classifier to new users and fine-tune only the rest. Our experiments with five datasets show up to 43% accuracy improvement and 66% training time reduction when compared to the baseline without using transfer learning. Furthermore, measurements on the hardware platform reveal that the power and energy consumption decreased by 43% and 68%, respectively, while achieving the same or higher accuracy as training from scratch. Our code is released for reproducibility. 1

Publisher

Association for Computing Machinery (ACM)

Subject

Health Information Management,Health Informatics,Computer Science Applications,Biomedical Engineering,Information Systems,Medicine (miscellaneous),Software

Reference58 articles.

1. Martín Abadi Ashish Agarwal Paul Barham Eugene Brevdo Zhifeng Chen Craig Citro Greg S. Corrado Andy Davis Jeffrey Dean Matthieu Devin Sanjay Ghemawat Ian Goodfellow Andrew Harp Geoffrey Irving Michael Isard Rafal Jozefowicz Yangqing Jia Lukasz Kaiser Manjunath Kudlur Josh Levenberg Dan Mané Mike Schuster Rajat Monga Sherry Moore Derek Murray Chris Olah Jonathon Shlens Benoit Steiner Ilya Sutskever Kunal Talwar Paul Tucker Vincent Vanhoucke Vijay Vasudevan Fernanda Viégas Oriol Vinyals Pete Warden Martin Wattenberg Martin Wicke Yuan Yu and Xiaoqiang Zheng. 2015. TensorFlow: Large-scale machine learning on heterogeneous systems. Software available from tensorflow.org.

2. Transferring activity recognition models for new wearable sensors with deep generative domain adaptation

3. Mgait: Model-based gait analysis using wearable bend and inertial sensors;An Sizhe;ACM Transactions on Internet of Things,2021

4. Davide Anguita, Alessandro Ghio, Luca Oneto, Xavier Parra, and Jorge Luis Reyes-Ortiz. 2013. A public domain dataset for human activity recognition using smartphones. In Proceedings of the Esann.

5. Andreas Argyriou, Theodoros Evgeniou, and Massimiliano Pontil. 2007. Multi-task feature learning. In Proceedings of the Advances in Neural Information Processing Systems. 41–48.

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