Litcius/Paper detail

NICER: A New and Improved Consumed Endurance and Recovery Metric to Quantify Muscle Fatigue of Mid-Air Interactions

Yi Li, Benjamin Tag, Shaozhang Dai, Robert G. Crowther, Tim Dwyer, Pourang Irani, Barrett Ens

2024ACM Transactions on Graphics15 citationsDOIOpen Access PDF

Abstract

Natural gestures are crucial for mid-air interaction, but predicting and managing muscle fatigue is challenging. Existing torque-based models are limited in their ability to model above-shoulder interactions and to account for fatigue recovery. We introduce a new hybrid model, NICER , which combines a torque-based approach with a new term derived from the empirical measurement of muscle contraction and a recovery factor to account for decreasing fatigue during rest. We evaluated NICER in a mid-air selection task using two interaction methods with different degrees of perceived fatigue. Results show that NICER can accurately model above-shoulder interactions as well as reflect fatigue recovery during rest periods. Moreover, both interaction methods show a stronger correlation with subjective fatigue measurement ( ρ = 0.978/0.976) than a previous model, Cumulative Fatigue ( ρ = 0.966/0.923), confirming that NICER is a powerful analytical tool to predict fatigue across a variety of gesture-based interactive applications.

Topics & Concepts

Muscle fatigueComputer scienceMetric (unit)GestureTask (project management)Physical medicine and rehabilitationSimulationArtificial intelligenceEngineeringElectromyographyMedicineSystems engineeringOperations managementInteractive and Immersive DisplaysTactile and Sensory InteractionsHand Gesture Recognition Systems