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In order to maximize the obtained information and the benefits from the use of obtrusive, physiological sensors, the collected data are processed to also detect abnormal physiology states that may endanger the subjects and those around them during critical operations. Three abnormal states are studied: drug and alcohol consumption and sleep deprivation. For the classification of the physiology, four state\u2010of\u2010the\u2010art techniques were compared, support vector machines, fuzzy expert systems, neural networks, and Gaussian mixture models. 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