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Fusion using neural networks for intoxication identification

机译:使用神经网络融合进行醉酒鉴定

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Fusion of dissimilar features by means of neural networks is demonstrated in this work aiming at improving the performance of these features for drunk person identification. The features are coming from the thermal images of the face of the inspected persons and have been derived using different image analysis techniques. Thus, they convey dissimilar information, which has to be transferred onto the same framework and fused to result into a decision with improved reliability. Conventional data association techniques are employed to explore the available information. After that, fusion of the information is carried out using Neural Networks. The resulting decision is of higher reliability compared to those achieved using the individual features separately. Experimental results are provided based on an existing sober-drunk database. The main advantage of the method is that it is not invasive and all the information is acquired remotely. In practice, an electronic system incorporating the proposed approach will point out to the police to whom an extended inspection for alcohol consumption is due.
机译:这项工作证明了通过神经网络融合不同特征的目的在于改善这些特征对醉酒者识别的性能。这些特征来自被检查者面部的热图像,并已使用不同的图像分析技术得出。因此,它们传达了不同的信息,必须将这些信息转移到同一框架上并融合在一起,以形成具有提高的可靠性的决策。使用常规的数据关联技术来探索可用信息。之后,使用神经网络进行信息融合。与单独使用各个功能所获得的决策相比,最终的决策具有更高的可靠性。根据现有的清醒数据库提供了实验结果。该方法的主要优点是它不是侵入性的,并且所有信息都是远程获取的。在实践中,结合了提议方法的电子系统将向警察指出要对酒精消费进行更广泛的检查。

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