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 Crowther, Tim, Dwyer, Pourang Irani, Barrett Ens

TL;DR
NICER is a hybrid model that accurately predicts muscle fatigue and recovery during mid-air interactions, improving over previous models by incorporating empirical muscle contraction data and recovery factors.
Contribution
The paper introduces NICER, a novel hybrid fatigue model that combines torque-based calculations with empirical muscle contraction data and recovery factors for better fatigue prediction.
Findings
NICER accurately models above-shoulder muscle fatigue.
NICER reflects fatigue recovery during rest periods.
NICER correlates strongly with subjective fatigue measures (r > 0.97).
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 (r = 0.978/0.976) than a previous model, Cumulative Fatigue (r = 0.966/…
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