Assessing the State of Self-Supervised Human Activity Recognition using Wearables
Harish Haresamudram, Irfan Essa, Thomas Pl\"otz

TL;DR
This paper systematically evaluates the progress of self-supervised learning methods in wearable human activity recognition, analyzing their robustness, dataset influence, and feature properties to understand their effectiveness in diverse scenarios.
Contribution
It introduces a comprehensive framework for assessing self-supervised HAR methods and applies it to seven state-of-the-art techniques, providing new insights into their properties and potential.
Findings
Self-supervised methods show varied robustness across conditions
Dataset characteristics significantly influence model performance
Feature space analysis reveals differences in learned representations
Abstract
The emergence of self-supervised learning in the field of wearables-based human activity recognition (HAR) has opened up opportunities to tackle the most pressing challenges in the field, namely to exploit unlabeled data to derive reliable recognition systems for scenarios where only small amounts of labeled training samples can be collected. As such, self-supervision, i.e., the paradigm of 'pretrain-then-finetune' has the potential to become a strong alternative to the predominant end-to-end training approaches, let alone hand-crafted features for the classic activity recognition chain. Recently a number of contributions have been made that introduced self-supervised learning into the field of HAR, including, Multi-task self-supervision, Masked Reconstruction, CPC, and SimCLR, to name but a few. With the initial success of these methods, the time has come for a systematic inventory and…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems
MethodsBitcoin Customer Service Number +1-833-534-1729 · *Communicated@Fast*How Do I Communicate to Expedia? · 1x1 Convolution · Batch Normalization · Dense Connections · Residual Connection · Max Pooling · Average Pooling · Residual Block · Color Jitter
