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Fuzzy Logic Decision Support System for Hypovigilance Detection based on CNN Feature Extractor and WN Classifier

机译:基于CNN特征提取器和WN分类器的低警惕性模糊逻辑决策支持系统

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Fatigue and drowsiness are among the main causes of traffic accidents, just behind excessive speed and alcoholism. This paper deals with the problem of road safety. It attempts to present a driver vigilance monitoring system based on a video approach. This work aims at creating an assistive driving application employing eyes closure duration and head posture estimation as performant signs for alertness control. The proposed system can be summarized in three main steps: Eyes' detection and tracking in a video, eyes' state classification and fusion of both sub-systems based on eyes' blinking and head position. To accomplish the previous tasks, we used the Viola and Jones algorithm for interest area detection thanks to its efficiency in real time applications. For the classification step, we used two novel architectures of transfer learning classifier based on fast wavelet transform and separator wavelet networks, which presents our main contribution of this paper. This novel architecture proves its performance compared to the classic version of the transfer learning based on SVM classifier and to our old classifier based only on fast wavelet networks without a deep learning structure. Different datasets with different classifiers are used to evaluate our new approach. Our second contribution is illustrated by the final system which uses the fuzzy logic and provides five different vigilance levels. Global rates given by experimental results show the effectiveness of our proposed classification system for eyes' state recognition and driver drowsiness detection.
机译:疲劳和嗜睡是交通事故的主要原因,仅次于过速和酗酒。本文涉及道路安全问题。它试图提出一种基于视频方法的驾驶员警惕性监视系统。这项工作旨在创建一种辅助驾驶应用程序,该应用程序将闭眼时间和头部姿势估计作为警觉控制的有效标志。提出的系统可以概括为三个主要步骤:视频中的眼睛检测和跟踪,眼睛的状态分类以及基于眼睛眨眼和头部位置的两个子系统的融合。为了完成之前的任务,我们使用Viola和Jones算法进行兴趣区域检测,这要归功于其在实​​时应用中的高效性。对于分类步骤,我们使用了基于快速小波变换和分离器小波网络的两种新型的迁移学习分类器架构,这是本文的主要贡献。与基于SVM分类器的转移学习的经典版本和仅基于快速小波网络而没有深度学习结构的旧分类器相比,这种新颖的体系结构证明了其性能。具有不同分类器的不同数据集用于评估我们的新方法。我们的第二个贡献是通过使用模糊逻辑并提供五个不同警戒级别的最终系统来说明的。实验结果给出的总体比率表明,我们提出的分类系统对于眼睛状态识别和驾驶员睡意检测的有效性。

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