German Center for Vertigo and Balance Disorders (DSGZ), Ludwig-Maximilians-University of Munich, 81377 Munich, Germany.
Institute for Emergency Medicine and Medical Management, Ludwig-Maximilians-University of Munich, 80336 Munich, Germany.
Sensors (Basel). 2024 Apr 23;24(9):2665. doi: 10.3390/s24092665.
Human activity recognition (HAR) technology enables continuous behavior monitoring, which is particularly valuable in healthcare. This study investigates the viability of using an ear-worn motion sensor for classifying daily activities, including lying, sitting/standing, walking, ascending stairs, descending stairs, and running. Fifty healthy participants (between 20 and 47 years old) engaged in these activities while under monitoring. Various machine learning algorithms, ranging from interpretable shallow models to state-of-the-art deep learning approaches designed for HAR (i.e., and ), were employed for classification. The results demonstrate the ear sensor's efficacy, with deep learning models achieving a 98% accuracy rate of classification. The obtained classification models are agnostic regarding which ear the sensor is worn and robust against moderate variations in sensor orientation (e.g., due to differences in auricle anatomy), meaning no initial calibration of the sensor orientation is required. The study underscores the ear's efficacy as a suitable site for monitoring human daily activity and suggests its potential for combining HAR with in-ear vital sign monitoring. This approach offers a practical method for comprehensive health monitoring by integrating sensors in a single anatomical location. This integration facilitates individualized health assessments, with potential applications in tele-monitoring, personalized health insights, and optimizing athletic training regimes.
人体活动识别 (HAR) 技术能够实现连续的行为监测,在医疗保健领域具有重要价值。本研究探讨了使用耳戴式运动传感器对日常活动(包括躺卧、坐/站、行走、上下楼梯和跑步)进行分类的可行性。五十名健康参与者(年龄在 20 岁至 47 岁之间)在监测下进行了这些活动。研究采用了各种机器学习算法,包括可解释的浅层模型和专为 HAR 设计的最先进的深度学习方法(即 和 )进行分类。研究结果表明,耳传感器具有有效性,深度学习模型的分类准确率达到 98%。所获得的分类模型不依赖于传感器佩戴在哪个耳朵上,并且对传感器方向的适度变化具有鲁棒性(例如,由于耳廓解剖结构的差异),这意味着无需对传感器方向进行初始校准。本研究强调了耳朵作为监测人体日常活动的合适部位的有效性,并表明其在将 HAR 与耳内生命体征监测相结合方面具有潜力。这种方法提供了一种将传感器集成在单个解剖位置的实用方法,用于全面健康监测。这种集成便于进行个性化健康评估,具有远程监测、个性化健康洞察和优化运动训练方案等潜在应用。