UnderPressure: Deep Learning for Foot Contact Detection, Ground Reaction Force Estimation and Footskate Cleanup
Lucas Mourot, Ludovic Hoyet, Fran\c{c}ois Le Clerc, Pierre Hellier

TL;DR
This paper introduces UnderPressure, a deep learning approach for accurate foot contact detection and ground reaction force estimation from motion data, improving motion synthesis and editing by reducing footskate artifacts.
Contribution
The paper presents a new labeled motion capture database and a deep neural network for reliable foot contact detection and ground reaction force estimation, enhancing motion editing workflows.
Findings
Outperforms heuristic methods in foot contact detection
Robust to noise and perturbations in motion data
Enables automatic footskate cleanup using inverse kinematics
Abstract
Human motion synthesis and editing are essential to many applications like film post-production. However, they often introduce artefacts in motions, which can be detrimental to the perceived realism. In particular, footskating is a frequent and disturbing artefact requiring foot contacts knowledge to be cleaned up. Current approaches to obtain foot contact labels rely either on unreliable threshold-based heuristics or on tedious manual annotation. In this article, we address foot contact label detection from motion with a deep learning. To this end, we first publicly release UnderPressure, a novel motion capture database labelled with pressure insoles data serving as reliable knowledge of foot contact with the ground. Then, we design and train a deep neural network to estimate ground reaction forces exerted on the feet from motion data and then derive accurate foot contact labels. The…
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Taxonomy
TopicsHuman Motion and Animation · Human Pose and Action Recognition · Video Analysis and Summarization
