Intelligent System for Fall Prediction Based on Accelerometer and Gyroscope of Fatal Injury in Geriatric

K. Amiroh, Dewi Rahmawati, A. Y. Wicaksono
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引用次数: 1

Abstract

Methods of prevention and equipment to reduce the risk of falls based on accelerometer and gyroscope sensor have developed rapidly because its operations are cheaper than video cameras. Improved accuracy of detection and fall prediction based on accelerometer and gyroscope sensor is carried out by utilizing Artificial Intelligence (AI) to predict falling patterns. However, the existing fall prediction system is less responsive and also has a low level of accuracy, sensitivity and specificity. The current system does not have a notification system to care givers or doctors in the hospital. To overcome the above problems, this study proposes the development of smart fall prediction system based on accelerometer and gyroscope for the prevention of fractures in geriatric populations (JaPiGi) which are accurate and have high sensitivity and specificity. This study uses Fuzzy Mamdani to recognize movements falling forward, falling sideways, sitting, sleeping, squatting and praying. The total data tested was 100 data from 10 participants. The introduction of this movement is based on 6 input variables from data of accelerometer and gyroscope sensor. To calculate the accuracy, precision, sensitivity and specificity in this study using the equation Receiver Operating Characteristic (ROC). Motion recognition is carried out 3 times with an average accuracy of 90%.
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基于加速度计和陀螺仪的老年人致命损伤跌倒智能预测系统
基于加速度计和陀螺仪传感器的预防方法和降低跌倒风险的设备发展迅速,因为其操作比摄像机便宜。利用人工智能预测跌倒模式,提高了基于加速度计和陀螺仪传感器的检测和跌倒预测的准确性。然而,现有的秋季预测系统响应性较差,准确性、敏感性和特异性也较低。目前的系统没有通知护理人员或医院医生的系统。为了克服上述问题,本研究提出开发基于加速度计和陀螺仪的智能跌倒预测系统,用于预防老年人群骨折(JaPiGi),该系统准确且具有高灵敏度和特异性。本研究使用模糊Mamdani来识别向前摔倒、侧身摔倒、坐着、睡觉、蹲着和祈祷的动作。测试的总数据是来自10名参与者的100个数据。该运动的引入是基于来自加速度计和陀螺仪传感器数据的6个输入变量。使用受试者工作特性(ROC)方程计算本研究的准确性、精密度、敏感性和特异性。运动识别进行了3次,平均准确率为90%。
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