An Estimation Method of Intellectual Work Performance by Using Physiological Indices
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Shutaro Kunimasa | Kyoich Seo | H. Shimoda | H. Ishii | Shutaro KUNIMASA | Kyoichi SEO | Hiroshi SHIMODA | Hirotake ISHII
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