Wearable environmental sensing to forecast how legged systems will interact with upcoming terrain
Michael D. Murray, James Tung, Richard W. Nuckols

TL;DR
This study demonstrates that visual data can be used to accurately forecast foot contact parameters like COP and TOI before foot-strike, enabling anticipatory control in assistive systems.
Contribution
We developed a lightweight CNN-RNN model that predicts COP and TOI from visual data within 50-150ms before foot-strike, advancing predictive capabilities for gait analysis.
Findings
Forecast errors decrease as the forecast horizon shortens.
Faster toe-swing speeds improve COP prediction accuracy.
The model runs at 60 FPS on standard hardware.
Abstract
Computer-vision (CV) has been used for environmental classification during gait and is often used to inform control in assistive systems; however, the ability to predict how the foot will contact a changing environment is underexplored. We evaluated the feasibility of forecasting the anterior-posterior (AP) foot center-of-pressure (COP) and time-of-impact (TOI) prior to foot-strike on a level-ground to stair-ascent transition. Eight subjects wore an RGB-D camera on their right shank and instrumented insoles while performing the task of stepping onto the stairs. We trained a CNN-RNN to forecast the COP and TOI continuously within a 250ms window prior to foot-strike, termed the forecast horizon (FH). The COP mean-absolute-error (MAE) at 150, 100, and 50ms FH was 29.42mm, 26.82, and 23.72mm respectively. The TOI MAE was 21.14, 20.08, and 17.73ms for 150, 100, and 50ms respectively. While…
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Taxonomy
TopicsBalance, Gait, and Falls Prevention · Prosthetics and Rehabilitation Robotics · Gait Recognition and Analysis
