X-ray Security Image Recognition System Based on Deep Learning

Zhen-hua JIA, Yu LI, Yu-hong CAO, Gang LIU, Yuan-fei XU

Abstract


In order to quickly and accurately identify and locate dangerous goods in security inspection images, this article proposes a real-time method to detect and locate dangerous goods by improving Faster RCNN algorithm and applies it to security inspection machine system. The main design idea of the system is to prepare the security inspection image data set and build an improved Faster RCNN model using Caffe framework. Through training and testing of the model, the recognition model with an average recognition rate of more than 80%, especially the detection effect of small targets, has been greatly improved. Finally, the model is applied to the current security inspection system, and an intelligent security image recognition system is designed and implemented.

Keywords


Convolutional neural network, Deep learning, Image recognition, Target detection


DOI
10.12783/dtcse/icaic2019/29428

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