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Real-Time Driver Drowsiness Detection for Embedded System Using Model Compression of Deep Neural Networks

机译:利用深神经网络模型压缩的嵌入式系统的实时驱动器跳转检测

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Driver's status is crucial because one of the main reasons for motor vehicular accidents is related to driver's inattention or drowsiness. Drowsiness detector on a car can reduce numerous accidents. Accidents occur because of a single moment of negligence, thus driver monitoring system which works in real-time is necessary. This detector should be deployable to an embedded device and perform at high accuracy. In this paper, a novel approach towards real-time drowsiness detection based on deep learning which can be implemented on a low cost embedded board and performs with a high accuracy is proposed. Main contribution of our paper is compression of heavy baseline model to a light weight model deployable to an embedded board. Moreover, minimized network structure was designed based on facial landmark input to recognize whether driver is drowsy or not. The proposed model achieved an accuracy of 89.5% on 3-class classification and speed of 14.9 frames per second (FPS) on Jetson TK1.
机译:驾驶员的状态至关重要,因为机动车辆事故的主要原因之一与驾驶员的疏忽或嗜睡有关。汽车上的嗜睡探测器可以减少许多事故。事故是由于单一的疏忽时出现,因此需要实际工作的驾驶员监控系统是必要的。该探测器应可以部署到嵌入式设备,以高精度执行。在本文中,提出了一种基于深度学习的实时嗜睡检测的新方法,其可以在低成本嵌入式板上实现,并以高精度执行。我们纸张的主要贡献是将重型基线模型压缩到可在嵌入式板上部署的轻量级模型。此外,基于面部地标输入设计了最小化的网络结构,以识别驱动器是否昏昏欲睡。所提出的模型在Jetson TK1上实现了3级分类和14.9帧帧的速度为89.5 %的准确性。

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