Falls are the leading cause of fatal and non-fatal injuries particularly for older persons. Imbalance can result from body internal causes such as illness, or external causes such as active or passive perturbation. Active perturbation is the result of applying an external force to a person, while passive perturbation results from human motion interacting with a static obstacle. This work proposes a metric that allows for the monitoring of the persons torso and its correlation to active and passive perturbations. We show that large change in the torso sway can be strongly correlated to active perturbations. We also show that by conditioning the expected path and torso sway on the past trajectory, torso motion and the surrounding scene, we can reasonably predict the future path and expected change in torso sway. This will have direct future application to fall prevention. The results demonstrated that the torso sway is strongly correlated with perturbations. And our model is able to make use of the visual cues presented in the panorama and condition the prediction accordingly.
翻译:跌倒是造成死亡和非致命伤害的主要原因,特别是对老年人而言。 疾病或主动或被动扰动等外部原因等身体内部原因可能造成不平衡。 主动扰动是将外力施于一个人的结果,而人类运动与静态障碍相互作用的被动扰动则产生结果。 这项工作提出了一种指标, 以便监测人脉冲及其与主动和被动扰动的相关性。 我们显示, 肌肉的巨变与主动扰动密切相关。 我们还表明,通过调整预期路径和托尔索在以往轨道、托尔索运动和周围景象上的方向,我们可以合理地预测未来的道路和预期的托尔索方向的变化。 这将直接在未来应用以降低预防作用。 结果显示, 脉冲与扰动密切相关。 我们的模型能够使用在全景图中显示的视觉提示, 并据此对预测进行条件 。