论文标题
使用可穿戴设备评估自我监督的人类活动识别状态
Assessing the State of Self-Supervised Human Activity Recognition using Wearables
论文作者
论文摘要
在基于可穿戴设备的人类活动识别(HAR)领域,自我监督学习的出现已经打开了解决该领域最紧迫的挑战的机会,即利用未标记的数据来为只能收集少量标记培训样本的情况来得出可靠的识别系统。因此,自我划分,即“预处理 - 先进”的范式有可能成为主要端到端训练方法的有力替代品,更不用说经典活动识别链的手工制作的特征了。最近,已经做出了许多贡献,将自我监督的学习引入了HAR领域,包括多任务自我任务,蒙面重建,CPC和SIMCLR,仅列举了一些。随着这些方法的最初成功,是时候进行系统的库存,并分析对该领域的潜在自我监督学习。本文完全提供了这一点。我们通过引入一个对模型性能进行多方面探索的框架来评估自我监督的HAR研究的进度。我们将框架分为三个维度,每个维度包含三个构成标准,因此每个维度都捕获了性能的特定方面,包括对不同的源和目标条件的鲁棒性,数据集特性的影响以及特征空间特征。我们利用此框架来评估HAR的七种最先进的自我监督方法,从而提出了对这些技术属性的见解,并确立了对各种情况的学习表现的价值。
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 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, such that each dimension captures specific aspects of performance, including the robustness to differing source and target conditions, the influence of dataset characteristics, and the feature space characteristics. We utilize this framework to assess seven state-of-the-art self-supervised methods for HAR, leading to the formulation of insights into the properties of these techniques and to establish their value towards learning representations for diverse scenarios.