汽车驾驶员中毒的检测

A. Rahul Harikumar, Tanay Grover, M. Kanchana
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引用次数: 0

摘要

创新技术的进步,可以准确地帮助及时检测人体中毒,特别是在需要在驾驶时检测中毒的情况下,需要更多的研究关注。尽管有使用面部识别来完成这项任务的概念性想法,但结果仍然需要改进。虽然现有的研究工作已经证明了特定架构的能力,但本文打算开发一种改进的系统,通过使用视觉方法和cnn来预测驾驶员是否醉酒。它还提供了人脸识别及其应用的总体概述。可以假设,如果一个改进的系统被开发并在车辆上实施,酒后驾驶的严重影响将会减少。本研究测试了五种方法,其中四种方法由CNN架构组成:VGG19、VGG16、MobileNet V2和ResNet 50。LSTM+注意机制方法的性能也在这种情况下进行了测试。最后,本文证明了VGG16架构为给定的分类问题提供了最佳的验证精度,同时还考虑了其他方法的结果来评估其在酒精检测系统中的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Intoxication in Automobile Drivers
The advancement of innovative technology that can accurately aid in the timely detection of intoxication in humans, particularly in scenarios requiring intoxication detection while driving, requires more research attention. Despite the fact that there are conceptual ideas for using facial recognition to perform this task, the results still need improvement. While the existing research works have demonstrated the capabilities of specific architectures, this article intends to develop an improved system to predict whether a driver is intoxicated or not by utilizing an ocular approach and CNNs. It also provides a general overview of face recognition and its applications. It can be assumed that if an improved system is developed and implemented in vehicles, the severe effects of drunk driving will be reduced. This study has tested five methods, within which four methods are composed of CNN architectures: VGG19, VGG16, MobileNet V2, and ResNet 50. The performance of an LSTM+ Attention Mechanism approach is also tested in this scenario. Finally, this article demonstrates that the VGG16 architecture provides the best validation accuracy for the given classification problem while also considering the results of other approaches to assess its applicability in alcoholic detection systems.
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