基于自监督表征学习和时谱特征融合的床位占用检测。

IF 3.6 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Yingjian Song, Zaid Farooq Pitafi, Fei Dou, Jin Sun, Xiang Zhang, Bradley G Phillips, Wenzhan Song
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引用次数: 0

摘要

在自动化睡眠监测系统中,床位占用率检测是其他下游任务(如推断睡眠活动和生命体征)的基础或第一步。由于环境设置单一,现有方法依赖于基于阈值的方法,不能很好地推广到现实环境。手动选择阈值需要观察大量数据,并且可能无法产生最佳结果。相比之下,获取广泛的标记感官数据在成本和时间方面提出了重大挑战。因此,开发能够使用有限数据在不同环境中泛化的模型是必要的。本文介绍了用于床位占用检测的SeismoDot,它由一个自监督学习模块和一个光谱-时间特征融合模块组成。与需要单独预训练和微调的传统方法不同,我们的自监督学习模块与主要目标任务协同优化,在扩展特征空间的同时,将学习到的表征指向任务相关的嵌入空间。所提出的特征融合模块能够同时利用时间和光谱特征,增强两个领域信息的多样性。通过结合这些技术,SeismoDot扩展了时间域和频谱域嵌入空间的多样性,增强了其在不同环境中的通用性。SeismoDot不仅在13种不同的环境中实现了高准确率(98.49%)和F1分数(98.08%),而且即使在仅使用总数据的20%(4天)进行训练时,它也保持了高性能(97.01%的准确率和96.54%的F1分数)。这证明了它在各种环境设置中进行泛化的卓越能力,即使数据可用性有限。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-Supervised Representation Learning and Temporal-Spectral Feature Fusion for Bed Occupancy Detection.

In automated sleep monitoring systems, bed occupancy detection is the foundation or the first step before other downstream tasks, such as inferring sleep activities and vital signs. The existing methods do not generalize well to real-world environments due to single environment settings and rely on threshold-based approaches. Manually selecting thresholds requires observing a large amount of data and may not yield optimal results. In contrast, acquiring extensive labeled sensory data poses significant challenges regarding cost and time. Hence, developing models capable of generalizing across diverse environments with limited data is imperative. This paper introduces SeismoDot, which consists of a self-supervised learning module and a spectral-temporal feature fusion module for bed occupancy detection. Unlike conventional methods that require separate pre-training and fine-tuning, our self-supervised learning module is co-optimized with the primary target task, which directs learned representations toward a task-relevant embedding space while expanding the feature space. The proposed feature fusion module enables the simultaneous exploitation of temporal and spectral features, enhancing the diversity of information from both domains. By combining these techniques, SeismoDot expands the diversity of embedding space for both the temporal and spectral domains to enhance its generalizability across different environments. SeismoDot not only achieves high accuracy (98.49%) and F1 scores (98.08%) across 13 diverse environments, but it also maintains high performance (97.01% accuracy and 96.54% F1 score) even when trained with just 20% (4 days) of the total data. This demonstrates its exceptional ability to generalize across various environmental settings, even with limited data availability.

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来源期刊
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies Computer Science-Computer Networks and Communications
CiteScore
9.10
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154
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