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Anticipating human error before it happens: Towards a psychophysiological model for online prediction of mental workload

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Academic year: 2021

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Figure

Figure 1. Low-fidelity flight simulator interface.
Figure 2 shows  mean subjective  workload scores (i.e. overall NASA-TLX) in each  experimental condition
Figure  3  shows  mean  production  time  in  each  experimental  condition.  The  target  time was 2,000 ms
Figure 4. Mean oxygenation (+SE) by experimental conditions (normalized data).

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