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基于轻量化分割网络的违禁品识别算法
引用本文:姚少卿,苏志刚. 基于轻量化分割网络的违禁品识别算法[J]. 激光与光电子学进展, 2021, 58(2): 219-227
作者姓名:姚少卿  苏志刚
作者单位:中国民航大学天津市智能信号与图像处理重点实验室,天津300300;中国民航大学天津市智能信号与图像处理重点实验室,天津300300;中国民航大学中欧航空工程师学院,天津300300
摘    要:针对传统语义分割算法参数量大、运行慢,不利于违禁品识别技术实际应用的问题,提出一种基于轻量化分割网络的违禁品识别算法.在模型的浅层特征层设计空洞卷积模块来扩大网络的感受野,减少误分类并提升分割精细度.在深层特征层设计非对称卷积模块取代传统单一串联卷积操作,降低计算复杂度.实验结果表明,所提算法在识别精度和速度上取得了均...

关 键 词:图像处理  违禁品识别  空洞卷积模块  非对称卷积模块

Prohibited Item Identification Algorithm Based on Lightweight Segmentation Network
Yao Shaoqing,Su Zhigang. Prohibited Item Identification Algorithm Based on Lightweight Segmentation Network[J]. Laser & Optoelectronics Progress, 2021, 58(2): 219-227
Authors:Yao Shaoqing  Su Zhigang
Affiliation:(Tianjin Key Laboratory for Advanced Signal Processing,Civil Aviation University of China,Tianjin 300300,China;Sino-European Institute of Aviation Engineering,Civil Aviation University of China,Tianjin 300300,China)
Abstract:Aimed at the problem of traditional semantic segmentation algorithms having large parameters and slow running time,which are not conducive to their practical application for contraband identification technology,this paper proposes a prohibited item identification algorithm based on a lightweight segmentation network.A dilated convolution module is used in a shallow feature layer of the model to enlarge the receptive field of the network,reduce misclassification,and improve segmentation precision.To reduce computational complexity,an asymmetric convolution module is used in a deep feature layer to replace the traditional single convolution operation.The experimental results show that the proposed algorithm achieves balanced performance for identification accuracy and speed,the mean intersection over union(mIoU)is 73.18×10-2,and the frames per second rate(FPS)is 27.1.
Keywords:image processing  prohibited item identification  dilated convolution module  asymmetric convolution module
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