Fall detection (FD) systems are important assistive technologies for healthcare that can detect emergency fall events and alert caregivers. However, it is not easy to obtain large-scale annotated fall events with various specifications of sensors or sensor positions during the implementation of accurate FD systems. Moreover, the knowledge obtained through machine learning has been restricted to tasks in the same domain. The mismatch between different domains might hinder the performance of FD systems. Cross-domain knowledge transfer is very beneficial for machine-learning-based FD systems to train a reliable FD model with well-labeled data in new environments. In this study, we propose domain-adaptive fall detection (DAFD) using deep adversarial training (DAT) to tackle cross-domain problems, such as cross-position and cross-configuration. The proposed DAFD can transfer knowledge from the source domain to the target domain by minimizing the domain discrepancy to avoid mismatch problems. The experimental results show that the average F1-score improvement when using DAFD ranges from 1.5% to 7% in the cross-position scenario, and from 3.5% to 12% in the cross-configuration scenario, compared to using the conventional FD model without domain adaptation training. The results demonstrate that the proposed DAFD successfully helps to deal with cross-domain problems and to achieve better detection performance.
翻译:秋天探测系统是一个重要的保健辅助技术,能够探测紧急秋天事件和提醒护理人员。然而,在实施准确的FD系统时,很难获得具有传感器或传感器位置的各种规格的大规模附带说明的秋天事件,因为传感器或传感器位置的规格各不相同。此外,通过机器学习获得的知识仅限于同一领域的任务。不同领域的不匹配可能妨碍FD系统的运行。跨域知识转让对于基于机械学习的FD系统非常有益,以在新环境中用标记良好的数据来训练可靠的FD模型。在本研究中,我们提议利用深度对抗性培训来解决交叉问题,例如交叉定位和交叉配置。拟议的DADDD可以将知识从源域转移到目标领域,尽量减少域差异,以避免不匹配问题。实验结果表明,在交叉定位情景中,使用DAFD的平均数从1.5%到7%不等,交叉配置情景中从3.5%到12%不等。与使用常规测试模型相比,拟议的DAFDD可以顺利地实现测试结果。