2026

arXiv

Wearable environmental sensing to forecast how legged systems will interact with upcoming terrain

Michael D. Murray, James Tung, Richard W. Nuckols

Systems Design Engineering, University of Waterloo, Waterloo, ON, Canada

Keywords

computer vision, gait transitions, center of pressure, time of impact, machine learning, wearable sensors, legged robotics

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 (TΟΙ) 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 torso velocity had no effect on the error in either task, faster toe-swing speeds prior to foot-strike were found to improve the prediction accuracy in the COP case, however, was insignificant in the TOI case. Further, more anterior foot-strikes were found to reduce COP prediction accuracy but did not affect the TOI prediction accuracy. We also found that our lightweight model was capable at running at 60 FPS on either a consumer grade laptop or an edge computing device. This study demonstrates that forecasting COP and TOI from visual data was feasible using a lightweight model, which may have important implications for anticipatory control in assistive systems.

Moticon's Summary

The researchers used Moticon sensorized insoles to collect ground-truth anterior-posterior center-of-pressure (COP) data at 100 Hz during stair-ascent transitions. Eight participants performed approximately 90 trials each, utilizing various walking speeds and foot-strike strategies (rear-foot, mid-foot, or fore-foot). These ground-truth measurements were critical for training and validating a CNN-RNN model that forecasts the location (COP) and timing (TOI) of foot-strike from 16.67 to 250 ms before contact. The study concluded that using visual data to forecast these parameters is technically feasible, showing that the Moticon-derived labels enabled the development of a lightweight model capable of real-time inference at 60 FPS for proactive exoskeleton control.

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