Marie TolkiehnLouis AtallahBenny LoGuang‐Zhong Yang
Falling is one of the leading causes of serious health decline or injury-related deaths in the elderly. For survivors of a fall, the resulting health expenses can be a devastating burden, largely because of the long recovery time and potential comorbidities that ensue. The detection of a fall is, therefore, important in care of the elderly for decreasing the reaction time by the care-givers especially for those in care who are particularly frail or living alone. Recent advances in motion-sensor technology have enabled wearable sensors to be used efficiently for pervasive care of the elderly. In addition to fall detection, it is also important to determine the direction of a fall, which could help in the location of joint weakness or post-fall fracture. This work uses a waist-worn sensor, encompassing a 3D accelerometer and a barometric pressure sensor, for reliable fall detection and the determination of the direction of a fall. Also assessed is an efficient analysis framework suitable for on-node implementation using a low-power micro-controller that involves both feature extraction and fall detection. A detailed laboratory analysis is presented validating the practical application of the system.
Elahe RadmaneshMehdi DelrobaeiOussama HabachiSomayyeh ChamaniYannis PoussetVahid Meghdadi
Andreas EjupiChantel GalangOmar AzizEdward J. ParkStephen N. Robinovitch
Shaikh Farhad HossainMd. Zahurul IslamMd. Liakot Ali
Changhong WangWei LüMichael R. NarayananDavid C. ChangStephen R. LordStephen J. RedmondNigel H. Lovell