基于脑电信号的混合深度迁移学习驾驶疲劳识别

K. Rezaee, Mohammad Hossein Khosravi, Hani H. Attar, S. Almatarneh
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引用次数: 2

摘要

造成交通事故的主要原因之一是疲劳驾驶。世界交通安全组织的统计数据表明,疲劳驾驶导致35-45%的道路交通事故,每年直接造成1550人死亡,71000人受伤,经济损失125亿美元。为了检测驾驶过程中的疲劳,设计一个准确、高效的分析架构至关重要。与面部分析或问卷设计等方法相比,生理信号可以显著降低驾驶员疲劳的主观性和个体性。脑电图信号包含有价值的疲劳信息。由于人与人之间的脑电信号存在显著差异,且在疲劳状态下难以采集到足够的信号样本,因此利用脑信号进行疲劳检测仍然是一个挑战。为了降低分类误差水平,本文采用混合深度学习作为一种高效快速的方法。通过将expanded - resnet和Inception模块相结合,该方法比其他学习方法速度更快,并且对疲劳检测具有满意的精度。窗口用于接收来自有限数量信道的信号。根据不同的窗口长度选择窗口,然后使用短时傅里叶变换(STFT)创建窗口的频谱图。该方法的准确率达到99%以上。为了识别人的疲劳状态,该方法使用了少量可以概括和解释的通道。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EEG-Based Driving Fatigue Recognition Using Hybrid Deep Transfer Learning Approach
One of the main causes of traffic accidents is driving while tired. World Traffic Safety Organization statistics indicate that driving while tired leads to 35-45% of road accidents and directly causes 1550 deaths, 71000 injuries, and 12.5 billion dollars in economic damage every year. To detect fatigue over time during driving, it is crucial to design an accurate and efficient analysis architecture. Physiological signals can significantly reduce the subjectivity and individuality of fatigue in drivers compared to methods like face analysis or questionnaire design. EEG signals contain valuable information about fatigue. Fatigue detection using brain signals is still a challenge due to the significant differences in EEG signals among people and the difficulty in collecting enough signal samples during fatigue. To reduce the level of classification error, hybrid deep learning was used in this paper as an efficient and fast method. By combining dilated-ResNet and Inception module, the approach is faster than other learning methods and provides satisfactory accuracy for fatigue detection. Windowing is used to receive signals from a limited number of channels. Windows are selected based on different lengths and then their spectrogram is created using short-time Fourier transform (STFT). More than 99% accuracy was achieved by the suggested approach. In order to recognize people's fatigue, the method has used a small number of channels that can be generalized and interpreted.
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