采用单三维加速度计和学习分类器的方向敏感跌倒检测系统

Farhad Hossain, Md Liakot Ali, Md. Zahurul Islam, H. Mustafa
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引用次数: 24

摘要

老年人跌倒的发病率不断上升。在60至65岁人群的死亡原因清单中,它排在第六位;第二个年龄在65岁到75岁之间;第一个除以75。在跌倒后的最初12分钟内对因跌倒而出现并发症的患者进行治疗,生存率为48% -75%。因此,对于许多国家来说,快速准确地检测跌倒事件是一种很大的必要性,特别是对于社会采用老年人独立生活文化的发达国家。确定跌倒的方向也很重要,因为它可以帮助快速确定关节软弱和骨折的位置。研究人员声称,超过90%的跌倒检测精度是基于加速度计和嵌入的额外传感器,如陀螺仪、心率计、磁力计和气压传感器。然而,大多数此类跌倒检测算法都是基于对所收集数据的观察分析而开发的,这导致了跌倒/非跌倒情况的阈值设置。为了检测下落的方向,一些研究人员使用陀螺仪或更多的加速度计。本文提出的方法是利用单个三维加速度计和机器学习算法,特别是SVM(支持向量机)来检测4种类型的跌倒(向前、向后、右、左)。当应用于13名男性受试者的实验数据时,所提出的系统区分跌倒和日常生活活动(ADL)的准确率高于先前报道的准确性水平。该系统可靠、用户友好、性价比高。
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A direction-sensitive fall detection system using single 3D accelerometer and learning classifier
The rate of fall incidence among the elderly people is ever increasing. It is at the sixth position in the list of causes of death for the people aged between 60 and 65; the second between 65 and 75; the first over 75. Treatment of a patient, experiencing complications due to a fall, within the first 12 minutes after a fall brings a survival rate of 48% –75%. So, fast and accurate detection of fall events is emerging as a big necessity for many countries, especially for the advanced world where the society adopts the culture of independent living for elderly people. It is also important to determine the direction of a fall as it can help determine the locations of joint weakness and fracture quickly. Researchers' claims of fall detection accuracy of over 90% are based on accelerometers and embedded extra sensors like gyroscopes, cardio tachometer, magnetometer, and barometric pressure sensors. However, most such fall detection algorithms have been developed based on observational analysis of the data gathered, leading to thresholds settings for fall/non-fall situations. To detect the direction of fall, some researchers uses gyroscope or more accelerometers. The proposed method, using single 3D accelerometer and machine learning algorithm particularly SVM (Support vector machine) is to detect 4 types of falls (forward, backward, right and left). When applied to experimental data from 13 male subjects, the proposed system discriminates between falls and activities of daily living (ADL) with better than previously reported accuracy level. The system is reliable, user friendly and cost effective.
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