论文标题
使用可穿戴的ECG和加速度计传感器的智能应用用于秋季检测
Smart Application for Fall Detection Using Wearable ECG & Accelerometer Sensors
论文作者
论文摘要
由于照顾不断增长的老年人口的医疗和财务需求,及时可靠地发现跌倒是一个大型且快速增长的研究领域。在过去的20年中,高质量硬件(高质量传感器和AI微芯片)和软件(机器学习算法)技术的可用性通过为开发人员提供开发此类系统的功能,从而成为这项研究的催化剂。这项研究开发了多个应用组件,以研究秋季检测系统的发展挑战和选择,并为将来的研究提供材料。使用此方法开发的智能应用程序通过秋季检测模型实验和模型移动部署的结果验证。总体上表现最好的模型是标准化的RESNET152,并带有2S窗口尺寸的数据集,可实现92.8%的AUC,87.28%的敏感性和98.33%的特异性。鉴于这些结果很明显,加速度计和心电图传感器对秋季检测有益,并且可以歧视跌倒和其他活动。由于所得数据集中确定的弱点,这项研究为改进留出了很大的改进空间。这些改进包括在跌落的临界阶段使用标签协议,增加数据集样本的数量,改善测试主题表示形式,并通过频域预处理进行实验。
Timely and reliable detection of falls is a large and rapidly growing field of research due to the medical and financial demand of caring for a constantly growing elderly population. Within the past 2 decades, the availability of high-quality hardware (high-quality sensors and AI microchips) and software (machine learning algorithms) technologies has served as a catalyst for this research by giving developers the capabilities to develop such systems. This study developed multiple application components in order to investigate the development challenges and choices for fall detection systems, and provide materials for future research. The smart application developed using this methodology was validated by the results from fall detection modelling experiments and model mobile deployment. The best performing model overall was the ResNet152 on a standardised, and shuffled dataset with a 2s window size which achieved 92.8% AUC, 87.28% sensitivity, and 98.33% specificity. Given these results it is evident that accelerometer and ECG sensors are beneficial for fall detection, and allow for the discrimination between falls and other activities. This study leaves a significant amount of room for improvement due to weaknesses identified in the resultant dataset. These improvements include using a labelling protocol for the critical phase of a fall, increasing the number of dataset samples, improving the test subject representation, and experimenting with frequency domain preprocessing.