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A Human-in-the-Loop Probabilistic CNN-Fuzzy Logic Framework for Accident Prediction in Vehicular Networks

机译:用于车辆网络的事故预测的LOMIN概率的概率CNN-FUZZY逻辑框架

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摘要

The vehicle accident prediction methods are designed to improve the vehicular safety and reduce the rescue response time in the case of an accident. The existing accident prediction methods, however, do not involve Human-in-the-Loop, i.e., do not consider the emotional state of a driver to predict the likelihood of an accident. We propose a Probabilistic Convolutional Neural Network (CNN)-Fuzzy Logic framework that involves Human-in-the-Loop and takes into account the multiple input streams of sensor generated data, i.e., human emotions and traffic data. The features extracted from the CNN model are fed to our designed probabilistic graph-based inference model to determine the accident probability. The probability is then mapped with accident severity through fuzzy membership functions for accident prediction. The experiment results show the promising performance of our proposed framework, i.e., 93.1% accuracy of face expressions, 76.2% accuracy of heartbeat, and 76.9% accuracy of traffic inputs and predicts the accident likelihood with 90% accuracy. The comparison, with related works, shows that the proposed framework can predict accidents with higher probabilities.
机译:车辆事故预测方法旨在提高车辆安全性,并在事故发生时降低救援响应时间。然而,现有的事故预测方法不涉及人在循环中,即,不要考虑驾驶员的情绪状态来预测事故的可能性。我们提出了一个概率卷积神经网络(CNN) - 涉及人类循环的逻辑框架,并考虑了传感器生成的多个输入流,即人类情绪和交通数据。从CNN模型中提取的特征被馈送到我们设计的基于概率图形的推理模型,以确定事故概率。然后通过模糊隶属函数进行事故严重性映射概率,以便发生事故预测。实验结果表明我们提出的框架的有希望的表现,即面部表情的精度为93.1%,心跳精度为76.2%,交通投入的准确性为76.9%,预测了90%的准确性的意外可能性。具有相关工程的比较表明,所提出的框架可以预测具有更高概率的事故。

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