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Towards Automatic Intoxication Detection from Speech in Real-Life Acoustic Environments

机译:从现实生活中的语音中自动中毒检测

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In-car intoxication detection from speech is a highly promising non-intrusive method to reduce the accident risk associated with drunk driving. However, in-car noise significantly influences the recognition performance and needs to be addressed in practical applications. In this paper, we investigate how seriously the intrinsic in-car noise and background music affect the accuracy of intoxication recognition. In extensive test runs using the official speech corpus of the INTERSPEECH 2011 Intoxication Challenge, realistic car noise and original popular music we conclude that stationary driving noise as well as music introduce a significant downgrade when acoustic models are trained on clean speech only, which can partly be alleviated by multi-condition training. Besides, exploiting cumulative evidence over time by late decision fusion appears to be a promising way to further enhance performance in noisy conditions.
机译:来自言语的汽车中毒检测是一种高度有前途的非侵入式方法,可以减少与醉酒驾驶相关的事故风险。然而,车载噪声显着影响识别性能,并且需要在实际应用中解决。在本文中,我们调查了内在的内在汽车噪音和背景音乐如何影响中毒识别的准确性。在广泛的测试中,使用官方语音语料库的行程挑战,现实的汽车噪音和原始流行音乐我们得出结论,静止的驱动噪音以及音乐当声学型号仅在清洁语音上培训时,可以显着降级,部分通过多条件培训来缓解。此外,晚期决策融合随着时间的推移,利用累计证据似乎是进一步提高嘈杂条件表现的有希望的有希望的方法。

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