2017
DOI: 10.1587/transinf.2016edp7354
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A New Automated Method for Evaluating Mental Workload Using Handwriting Features

Abstract: SUMMARYResearchers have already attributed a certain amount of variability and "drift" in an individual's handwriting pattern to mental workload, but this phenomenon has not been explored adequately. Especially, there still lacks an automated method for accurately predicting mental workload using handwriting features. To solve the problem, we first conducted an experiment to collect handwriting data under different mental workload conditions. Then, a predictive model (called SVM-GA) on twolevel handwriting fea… Show more

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