Deep Convolutional Neural Network Based Traffic Vehicle Detection and Recognition

Author(s):  
Yukun Rao ◽  
Guanwen Zhang ◽  
Wei Zhou ◽  
Changhao Wang ◽  
Yu Lv
2021 ◽  
Author(s):  
Hao Zheng ◽  
Jianfang Liu ◽  
Xiaogang Ren

Abstract Although the current vehicle detection and recognition framework based on deep learning has its own characteristics and advantages, it is difficult to effectively combine multi-scale and multi category vehicle features, and there is still room for improvement in vehicle detection and recognition performance. Based on this, an improved fast R-CNN convolutional neural network is proposed to detect dim targets in complex traffic environment. The deep learning model of fast R-CNN convolutional neural network is introduced into the image recognition of complex traffic environment, and a structure optimization method is proposed, which replaces vgg16 in fast RCNN with RESNET to make it suitable for small target recognition in complex background. Max pooling is the down sampling method, and then feature pyramid network is introduced into RPN to generate target candidate box to optimize the structure of convolutional neural network. After training with 1497 images, the complex traffic environment images are identified and tested.


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