Department of Electrical and Computer Engineering, The University of Alabama, Tuscaloosa, AL 35487, USA.
Department of Mechanical Engineering, The University of Alabama, Tuscaloosa, AL 35487, USA.
Sensors (Basel). 2023 Jun 5;23(11):5355. doi: 10.3390/s23115355.
Walking in real-world environments involves constant decision-making, e.g., when approaching a staircase, an individual decides whether to engage (climbing the stairs) or avoid. For the control of assistive robots (e.g., robotic lower-limb prostheses), recognizing such motion intent is an important but challenging task, primarily due to the lack of available information. This paper presents a novel vision-based method to recognize an individual's motion intent when approaching a staircase before the potential transition of motion mode (walking to stair climbing) occurs. Leveraging the egocentric images from a head-mounted camera, the authors trained a YOLOv5 object detection model to detect staircases. Subsequently, an AdaBoost and gradient boost (GB) classifier was developed to recognize the individual's intention of engaging or avoiding the upcoming stairway. This novel method has been demonstrated to provide reliable (97.69%) recognition at least 2 steps before the potential mode transition, which is expected to provide ample time for the controller mode transition in an assistive robot in real-world use.
在真实环境中行走涉及到持续的决策,例如,当接近楼梯时,个体决定是否参与(爬上楼梯)或避免。对于辅助机器人(例如,机器人下肢假肢)的控制,识别这种运动意图是一项重要但具有挑战性的任务,主要是由于缺乏可用信息。本文提出了一种新的基于视觉的方法,用于在潜在运动模式(从行走转变为爬楼梯)发生之前,识别个体在接近楼梯时的运动意图。利用头戴式摄像机的自拍照,作者训练了一个 YOLOv5 目标检测模型来检测楼梯。随后,开发了一个 AdaBoost 和梯度提升(GB)分类器来识别个体参与或避免即将到来的楼梯的意图。这种新方法已被证明可以在潜在模式转变前至少 2 步提供可靠的(97.69%)识别,这有望为辅助机器人在实际使用中的控制器模式转变提供充足的时间。