稳健性(进化)
估计员
计算机科学
步态
可穿戴计算机
贝叶斯概率
卡尔曼滤波器
公制(单位)
机器人
运动学
人工智能
数学
工程类
统计
物理医学与康复
经典力学
生物化学
运营管理
物理
基因
嵌入式系统
化学
医学
作者
Ting‐Wei Hsu,Robert D. Gregg,Gray C. Thomas
出处
期刊:IEEE robotics and automation letters
日期:2024-01-16
卷期号:9 (3): 2104-2111
被引量:4
标识
DOI:10.1109/lra.2024.3354558
摘要
Lower-limb wearable robots designed to assist people in everyday activities must reliably recover from any momentary confusion about what the user is doing. Such confusion might arise from momentary sensor failure, collision with an obstacle, losing track of gait due to an out-of-distribution stride, etc. Systems that infer a user's walking condition from angle measurements using Bayesian filters (e.g., extended Kalman filters) have been shown to accurately track gait across a range of activities. However, due to the fundamental problem structure and assumptions of Bayesian filter implementations, such estimators risk becoming 'lost' with little hope of a quick recovery. In this paper, we 1) introduce a Monte Carlo-based metric to quantify the robustness of pattern-tracking gait estimators, 2) propose strategies for improving tracking robustness, and 3) systematically evaluate them against this new metric using a publicly available gait biomechanics dataset. Our results, aggregating 2,700 trials of simulated walking of 10 able-bodied subjects under random perturbations, suggest that drastic improvements in robustness (from 8.9% to 99%) are possible using relatively simple modifications to the estimation process without noticeably degrading estimator accuracy.
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