用于识别帕金森病中特定人类运动障碍的智能传感器

P. Lorenzi, R. Rao, G. Romano, Ardian Kita, M. Serpa, F. Filesi, Fernanda Irrera, M. Bologna, A. Suppa, A. Berardelli
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引用次数: 16

摘要

提出了一种基于惯性测量单元(imu)的可穿戴传感系统,用于长时间检测特定的人体运动障碍。该系统使用放置在头部靠近耳朵的单个传感器。该系统识别出明显的步态特征,如不规则的步伐和步态阻塞(步态冻结)。相对于身体上的其他位置,耳机对患者摆脱障碍时躯干摆动的敏感度最高,这大大增加了跌倒的风险。这款耳机还有一个优点是易于佩戴,整个系统可以包含在一个包装中。事实上,一个用于向患者提供听觉反馈的音频设备无需与耳朵进行任何无线/有线连接即可集成。这些运动特征的分类由人工神经网络(ANN)执行,并从IMU收集的原始信号开始。人工神经网络识别算法非常通用,适用于任何单独的步态特征。人工神经网络允许鲁棒和可靠的检测目标的动力学特征,需要快速和轻量级的计算。本文给出了在PC机外计算得到的不规则步长、主干振荡和停止状态的识别,同时又不失方法有效性的通用性。最终的耳机系统将非常节能,这要归功于它的紧凑性、人工神经网络避免了计算能量浪费的事实,以及音频反馈不需要任何有线/无线连接。这在功耗和电池寿命(监控时间)方面对系统性能有积极影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart sensors for the recognition of specific human motion disorders in Parkinson's disease
It is proposed a wearable sensing system based on Inertial Measurement Units (IMUs) for the long-time detection of specific human motion disorders. The system uses a single sensor positioned on the head, close to the ear. The system recognizes noticeable gait features as irregular steps and the gait block (freezing of gait). Respect to other positions on the body, the headset has the maximum sensitivity to the trunk oscillations which patients make to get out of the block, increasing dramatically the risk of falls. The headset has also the advantage that it is easy to wear and the whole system can be contained in a single package. In fact, an audio device for auditory feedback to the patient can be integrated without any wireless/wired connection to the ear. The classification of those motion features is performed by an artificial neural network (ANN) and starts from the raw signals collected by the IMU. The ANN algorithm of recognition is extremely versatile and works for any individual gait features. The ANN allows robust and reliable detection of the targeted kinetic features and requires fast and light calculations. In this paper, it is presented the recognition of irregular steps, trunk oscillations and stop state obtained performing calculations out-board on a PC, without losing the generality of the method validity. The final headset system will be extremely energy efficient thanks to its compactness, to the fact that the ANN avoids computational energy wasting, and that the audio feedback does not require any wired/wireless connection. This affects positively the system performance in terms of power consumption and battery life (monitoring time).
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