论文标题

使用环境传感器进行活动分类的自制变压器

Self-Supervised Transformers for Activity Classification using Ambient Sensors

论文作者

Hicks, Luke, Ruiz-Garcia, Ariel, Palade, Vasile, Almakky, Ibrahim

论文摘要

为人口衰老提供护理是一项艰巨的任务,随着预期寿命估计的增加,需要高级护理的人数迅速增长。本文提出了一种基于变压器神经网络的方法,以对基于环境传感器的环境中居民的活动进行分类。我们还提出了一种方法,以自我监督的方式作为混合自动编码器分类器模型,而不是使用对比度损失,以预训练变压器。该研究的社会影响是通过该方法的更广泛的好处以及确定人类行为过渡的下一步的更广泛的好处。近年来,将基于传感器的技术集成到数据收集的护理设施中的动力越来越大。这允许在许多方面使用机器学习,包括活动识别和异常检测。由于医疗保健环境的敏感性,当前研究中使用的某些数据收集方法被认为是在高级护理行业中具有侵入性的,包括用于基于图像的活动识别的相机以及用于活动跟踪的可穿戴设备,但是最近的研究表明,由于缺乏参与数据收集的居民兴趣,因此使用这些方法通常会导致数据质量差。这导致着眼于环境传感器,例如二元PIR运动,连接的家用电器以及电力和水计量。通过在环境数据收集方面保持一致性,数据的质量更为可靠,这提供了以增强精度进行分类的机会。因此,在这项研究中,我们希望找到一种使用深度学习来使用环境传感器数据对人类活动进行分类的最佳方法。

Providing care for ageing populations is an onerous task, and as life expectancy estimates continue to rise, the number of people that require senior care is growing rapidly. This paper proposes a methodology based on Transformer Neural Networks to classify the activities of a resident within an ambient sensor based environment. We also propose a methodology to pre-train Transformers in a self-supervised manner, as a hybrid autoencoder-classifier model instead of using contrastive loss. The social impact of the research is considered with wider benefits of the approach and next steps for identifying transitions in human behaviour. In recent years there has been an increasing drive for integrating sensor based technologies within care facilities for data collection. This allows for employing machine learning for many aspects including activity recognition and anomaly detection. Due to the sensitivity of healthcare environments, some methods of data collection used in current research are considered to be intrusive within the senior care industry, including cameras for image based activity recognition, and wearables for activity tracking, but recent studies have shown that using these methods commonly result in poor data quality due to the lack of resident interest in participating in data gathering. This has led to a focus on ambient sensors, such as binary PIR motion, connected domestic appliances, and electricity and water metering. By having consistency in ambient data collection, the quality of data is considerably more reliable, presenting the opportunity to perform classification with enhanced accuracy. Therefore, in this research we looked to find an optimal way of using deep learning to classify human activity with ambient sensor data.

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