A Novel Abnormal Driving Detection Method via Deep Learning in Wireless Sensor Network

Xi Liu, Mingyuan Luo, Wei Wang, Wei Huang
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Abstract

In this study, the abnormal driving detection in the current research hotspot wireless sensor network (WSN) is emphatically discussed, and three improved fusion models based on Densely Connected Convolutional Network (DenseNet), which is named Wide Group Densely Network (WGD), Wide Group Residual Densely Network 1 (WGRD1), and Wide Group Residual Densely Network 2 (WGRD2) respectively, are proposed for the first time. WGD introduces two deep learning network indicators, width and cardinality, into DenseNet. WGRD1 and WGRD2, on the basis of WGD, use two different methods to introduce the important idea of ResNet into DenseNet, which is residual-block output and direct-connected streams are added by elements. These three models use end-to-end learning for training. The experimental analysis based on the abnormal driving image data set shows that the performance of our improved model for abnormal driving detection in the wireless sensor network is better than several excellent deep learning models and traditional deep learning models.
基于深度学习的无线传感器网络异常驾驶检测方法
本研究重点讨论了当前研究热点无线传感器网络(WSN)中的异常驾驶检测问题,并首次提出了基于密集连接卷积网络(DenseNet)的三种改进融合模型,分别命名为Wide Group dense network (WGD)、Wide Group Residual dense network 1 (WGRD1)和Wide Group Residual dense network 2 (WGRD2)。WGD在DenseNet中引入了两个深度学习网络指标,宽度和基数。WGRD1和WGRD2在WGD的基础上,采用两种不同的方法将ResNet的重要思想引入到DenseNet中,即残差块输出和直连流按元素相加。这三种模型使用端到端学习进行训练。基于异常驾驶图像数据集的实验分析表明,改进模型在无线传感器网络中异常驾驶检测的性能优于几种优秀的深度学习模型和传统的深度学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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