Associação Fraunhofer Portugal Research, Rua Alfredo Allen 455/461, 4200-135 Porto, Portugal.
Laboratório de Instrumentação, Engenharia Biomédica e Física da Radiação (LIBPhys-UNL), Departamento de Física, Faculdade de Ciências e Tecnologia (FCT), Universidade Nova de Lisboa, 2829-516 Caparica, Portugal.
Sensors (Basel). 2022 Sep 27;22(19):7324. doi: 10.3390/s22197324.
Human Activity Recognition (HAR) has been studied extensively, yet current approaches are not capable of generalizing across different domains (i.e., subjects, devices, or datasets) with acceptable performance. This lack of generalization hinders the applicability of these models in real-world environments. As deep neural networks are becoming increasingly popular in recent work, there is a need for an explicit comparison between handcrafted and deep representations in Out-of-Distribution (OOD) settings. This paper compares both approaches in multiple domains using homogenized public datasets. First, we compare several metrics to validate three different OOD settings. In our main experiments, we then verify that even though deep learning initially outperforms models with handcrafted features, the situation is reversed as the distance from the training distribution increases. These findings support the hypothesis that handcrafted features may generalize better across specific domains.
人体活动识别(HAR)已经得到了广泛的研究,但当前的方法无法在不同的领域(即主体、设备或数据集)中以可接受的性能进行泛化。这种缺乏泛化能力限制了这些模型在实际环境中的应用。由于深度学习在最近的工作中越来越受欢迎,因此需要在离群值(OOD)设置中对手工制作和深度学习表示进行明确比较。本文使用均质公共数据集在多个领域比较了这两种方法。首先,我们比较了几种指标来验证三种不同的 OOD 设置。在我们的主要实验中,我们验证了即使深度学习最初在表现上优于具有手工特征的模型,但随着与训练分布的距离增加,情况会发生逆转。这些发现支持了这样一种假设,即手工特征可能在特定领域中更好地泛化。