Improving Recognition of Speaker States and Traits by Cumulative Evidence: Intoxication, Sleepiness, Age and Gender

We address the fully automatic recognition of intoxication, sleepiness, age and gender from speech in medium-term observation intervals of up to several minutes. The nature of these speaker states and traits as being medium-term or long-term, as opposed to short-term states such as emotion, makes it possible to collect cumulative evidence in the form of utterance level decisions; we show that by fusing these decisions along the time axis, more and more accurate decisions can be obtained. In extensive test runs on three official INTERSPEECH Challenge corpora, we show that the average recall can be improved by up to 5 %, 6 %, 10 % and 11 % absolute by longer-term observation of speaker sleepiness, gender, intoxication, and age, respectively, compared to the accuracy of a decision from a single utterance.