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首页> 外文期刊>IEICE transactions on information and systems >Driver Drowsiness Estimation by Parallel Linked Time-Domain CNN with Novel Temporal Measures on Eye States
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Driver Drowsiness Estimation by Parallel Linked Time-Domain CNN with Novel Temporal Measures on Eye States

机译:驾驶员通过并行相关的时域CNN与眼睛状态的新型时间措施的平行链接时域CNN陷入困境

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Driver drowsiness estimation is one of the important tasks for preventing car accidents. Most of the approaches are binary classification that classify a driver is significantly drowsy or not. Multi-level drowsiness estimation, that detects not only significant drowsiness but also moderate drowsiness, is helpful to a safer and more comfortable car system. Existing approaches are mostly based on conventional temporal measures which extract temporal information related to eye states, and these measures mainly focus on detecting significant drowsiness for binary classification. For multi-level drowsiness estimation, we propose two temporal measures, average eye closed time (AECT) and soft percentage of eyelid closure (Soft PERCLOS). Existing approaches are also based on a time domain convolutional neural network (CNN) as deep neural network models, of which layers are linked sequentially. The network model extracts features mainly focusing on mono-temporal resolution. We found that features focusing on multi-temporal resolution are effective to multi-level drowsiness estimation, and we propose a parallel linked time-domain CNN to extract the multi-temporal features. We collected an own dataset in a real environment and evaluated the proposed methods with the dataset. Compared with existing temporal measures and network models, Our system outperforms the existing approaches on the dataset.
机译:驾驶员嗜睡估计是防止汽车事故的重要任务之一。大多数方法是分类驱动程序的二进制分类显着昏昏欲睡。多级嗜睡估计,不仅检测到显着的嗜睡,而且还有适度的嗜睡,有助于更安全,更舒适的汽车系统。现有方法主要基于提取与眼源相关的时间信息的传统时间措施,这些措施主要关注检测二进制分类的显着嗜睡。对于多级嗜可能估计,我们提出了两个时间措施,平均闭合时间(AECT)和眼睑闭合的软百分比(软瓣)。现有方法还基于时域卷积神经网络(CNN)作为深度神经网络模型,其中层顺序链接。网络模型提取的功能主要关注单时段分辨率。我们发现,专注于多时间分辨率的特征对于多级困难估计有效,并且我们提出了一个并行链接时域CNN以提取多时间特征。我们在真实环境中收集了自己的数据集,并用数据集评估了所提出的方法。与现有的时间测量和网络模型相比,我们的系统优于数据集上现有的现有方法。

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