Assessing the State of Self-Supervised Human Activity Recognition using
Wearables
- URL: http://arxiv.org/abs/2202.12938v1
- Date: Tue, 22 Feb 2022 02:21:50 GMT
- Title: Assessing the State of Self-Supervised Human Activity Recognition using
Wearables
- Authors: Harish Haresamudram, Irfan Essa and Thomas Pl\"otz
- Abstract summary: Self-supervised learning in the field of wearables-based human activity recognition (HAR)
Self-supervised methods enable a host of new application domains such as, for example, domain adaptation and transfer across sensor positions, activities etc.
- Score: 6.777825307593778
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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 from only small amounts of labeled training
samples. Furthermore, self-supervised methods enable a host of new application
domains such as, for example, domain adaptation and transfer across sensor
positions, activities etc. 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 the classic activity
recognition chain with hand-crafted features of sensor data. 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 to name but a few. With the initial success of these
methods, the time has come for a systematic inventory and analysis of the
potential self-supervised learning has for the field. This paper provides
exactly that. We assess the progress of self-supervised HAR research by
introducing a framework that performs a multi-faceted exploration of model
performance. We organize the framework into three dimensions, each containing
three constituent criteria, and utilize it to assess state-of-the-art
self-supervised learning methods in a large empirical study on a curated set of
nine diverse benchmarks. This exploration leads us to the formulation of
insights into the properties of these techniques and to establish their value
towards learning representations for diverse scenarios. Based on our findings
we call upon the community to join our efforts and to contribute towards
shaping the evaluation of the ongoing paradigm change in modeling human
activities from body-worn sensor data.
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