基于叠加集成的分心驾驶员检测

Ketan Ramesh Dhakate, Ratnakar Dash
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引用次数: 21

摘要

分心驾驶是造成车祸的主要原因之一。在驾驶车辆时,驾驶员经常进行分散驾驶注意力的次要活动。减少驾驶员分心是智能交通系统的一个关键方面。为了减少事故,提高安全性,本文提出了一种分心驾驶检测系统,该系统使用集成技术对各种类型的分心活动进行分类。不同的卷积网络通过消除最后一层得到特征向量来训练图像。利用叠加集成技术,将所有特征向量叠加在卷积网络上进行训练。这种叠加技术用于检测分心司机的姿势,准确率达到97%。该研究展示了模型如何预测期望的班级。本文提出的模型可用于实时环境中检测驾驶员所做的活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distracted Driver Detection using Stacking Ensemble
Distracted driving is one of the primary causes of car crashes. While driving the vehicle, drivers frequently perform secondary activities that distract driving. A decrease in driver distraction is a critical aspect of the smart transportation system. To decrease accidents and improve safety, this paper proposes a distracted driver detection system that classifies various types of distracted activities using ensemble techniques. Different convolutional networks had been trained on images by eliminating the final layer to get there feature vectors. By using the stacking ensemble technique, we stack all the feature vectors to train it on a convolutional network. This stacking technique, which is used to detect the distracted driver posture, achieves 97% accuracy. The study shows how models predict the desired classes. The model proposed in this paper can be used in a real- time environment to detect activities done by the driver.
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