Preprint Article Version 1 Preserved in Portico This version is not peer-reviewed

Lifelong Adaptive Machine Learning for Sensor-based Human Activity Recognition Using Prototypical Networks

Version 1 : Received: 3 August 2022 / Approved: 5 August 2022 / Online: 5 August 2022 (08:35:15 CEST)

A peer-reviewed article of this Preprint also exists.

Adaimi, R.; Thomaz, E. Lifelong Adaptive Machine Learning for Sensor-Based Human Activity Recognition Using Prototypical Networks. Sensors 2022, 22, 6881. Adaimi, R.; Thomaz, E. Lifelong Adaptive Machine Learning for Sensor-Based Human Activity Recognition Using Prototypical Networks. Sensors 2022, 22, 6881.

Abstract

Continual learning (CL), a.k.a lifelong learning, is an emerging research topic that has been attracting increasing interest in the field of machine learning. With human activity recognition (HAR) playing a key role in enabling numerous real-world applications, an essential step towards the long-term deployment of such systems is to extend the activity model to dynamically adapt to changes in people’s everyday behavior. Current research in CL applied to HAR domain is still under-explored with researchers exploring existing methods developed for computer vision in HAR. Moreover, analysis has so far focused on task-incremental or class-incremental learning paradigms where task boundaries are known. This impedes the applicability of such methods for real-world systems. To push this field forward, we build on recent advances in the area of continual learning and design a lifelong adaptive learning framework using Prototypical Networks, LAPNet-HAR, that processes sensor-based data streams in a task-free data-incremental fashion and mitigates catastrophic forgetting using experience replay and continual prototype adaptation. Online learning is further facilitated using contrastive loss to enforce inter-class separation. LAPNet-HAR is evaluated on 5 publicly available activity datasets in terms of its ability to acquire new information while preserving previous knowledge. Our extensive empirical results demonstrate the effectiveness of LAPNet-HAR in task-free CL and uncover useful insights for future challenges.

Keywords

Continual Learning; Lifelong Learning; Prototypical Networks; Catastrophic Forgetting; Intransigence; Task-free; Incremental Learning; Online Learning; Human Activity Recognition

Subject

Engineering, Electrical and Electronic Engineering

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