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首页> 外文期刊>Accident Analysis and Prevention >Using long short term memory and convolutional neural networks for driver drowsiness detection
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Using long short term memory and convolutional neural networks for driver drowsiness detection

机译:使用长短短期内存和卷积神经网络进行驾驶员嗜睡检测

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Fatigue negatively affects the safety and performance of drivers on the road. In fact, drowsiness and fatigue are the cause of a substantial number of motor vehicle accidents. Drowsiness among the drivers can be detected using variety of modalities, including electroencephalogram (EEG), eye movement, and vehicle driving dynamics. Among these EEG is highly accurate but very intrusive and cumbersome. On the other hand, vehicle driving dynamics are very easy to acquire but accuracy is not very high. Eye movement based approach is very attractive in terms of balance between these two extremes. However, eye movement based techniques normally require an eye tracking device which consists of high speed camera with sophisticated algorithm to extract eye movement related parameters such as blinking, eye closure, saccades, fixation etc. This makes eye tracking based drowsiness detection difficult to implement as a practical system, especially on an embedded platform.In this paper, authors propose to use eye images from camera directly without the need for expensive eye-tracking system. Here, eye related movements are captured by Recurrent Neural Network (RNN) to detect the drowsiness. Long Short Term Memory (LSTM) is a class of RNN which has several advantages over vanilla RNNs. In this work an array of LSTM cells are utilized to model the eye movements. Two types of LSTMs were employed: 1-D LSTM (R-LSTM) which is used as baseline and the convolutional LSTM (C-LSTM) which facilitates using 2-D images directly. Patches of size 48 x 48 around each eye were extracted from 38 subjects, participating in a simulated driving experiment. The state of vigilance among the subjects were independently assessed by power spectral analysis of multichannel electroencephalogram (EEG) signals, recorded simultaneously, and binary labels of alert and drowsy (baseline) were generated.Results show high efficacy of the proposed system. R-LSTM based approach resulted in accuracy around 82 % and C-LSTM based approach resulted in accuracy in the range of 95%-97%. Comparison is also provided with a recently published eye-tracking based approach, showing the proposed LSTM technique outperform with a wide margin.
机译:疲劳对道路上司机的安全性和表现产生负面影响。事实上,嗜睡和疲劳是大量机动车辆事故的原因。可以使用各种方式检测驱动程序之间的嗜睡,包括脑电图(EEG),眼睛运动和车辆驾驶动态。在这些脑梗死中是高度准确的,但非常侵扰和繁琐。另一方面,车辆驾驶动态非常容易获得,但精度不是很高。基于眼睛运动的方法在这两个极端之间的平衡方面非常有吸引力。然而,基于眼睛运动的技术通常需要一种眼跟踪装置,该技术包括具有复杂算法的高速相机,可以提取眼球运动相关参数,例如闪烁,眼部闭合,扫视,固定等。这使得基于眼睛跟踪的嗜睡检测难以实现一个实用的系统,特别是在嵌入式平台上。本文提出了直接从相机中使用眼睛图像而无需昂贵的眼睛跟踪系统。这里,通过经常性神经网络(RNN)捕获眼睛相关运动以检测蠕动。长期内记忆(LSTM)是一类RNN,其与香草RNN有几个优势。在这项工作中,LSTM细胞阵列用于模拟眼睛运动。采用两种类型的LSTM:1-D LSTM(R-LSTM)用作基线和卷积LSTM(C-LSTM),其便于使用2-D图像直接使用。从38个受试者中提取各个眼睛周围的尺寸48×48的斑块,参与模拟驾驶实验。受试者之间的警惕状态是通过对多通道脑电图(EEG)信号的功率谱分析来分析的,同时记录,并产生了警报和昏昏欲睡的二进制标签。结果显示了所提出的系统的高功效。基于R-LSTM的方法导致精度约为82%,基于C-LSTM的方法导致精度为95%-97%。还提供了最近发表的基于眼跟踪的方法的比较,显示了所提出的LSTM技术以宽边缘呈现。

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