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基于SSD改进的目标检测方法研究
引用本文:张俊蓉,徐长彬,唐明周,鹿玮,卞紫阳.基于SSD改进的目标检测方法研究[J].激光与红外,2019,49(8):1019-1025.
作者姓名:张俊蓉  徐长彬  唐明周  鹿玮  卞紫阳
作者单位:华北光电技术研究所,北京,100015;华北光电技术研究所,北京,100015;华北光电技术研究所,北京,100015;华北光电技术研究所,北京,100015;华北光电技术研究所,北京,100015
摘    要:为了满足目标检测任务实时性的要求,基于轻量级深度学习目标检测网络SSD_Mobilenetv1,通过改进其网络结构,以及增加更细粒特征图参与位置回归和分类来综合网络的上下文信息及引入反残差模块提升网络提取特征的能力,实验表明在保证实时检测速度的同时提高了检测精度,并在KITTI数据集上进行训练验证,取得了良好的效果。

关 键 词:深度学习  KITTI数据集  目标检测

The improved target detection methods based on SSD network
ZHANG Jun-rong,XU Chang-bin,TANG Ming-zhou,LU Wei,BIAN Zi-yang.The improved target detection methods based on SSD network[J].Laser & Infrared,2019,49(8):1019-1025.
Authors:ZHANG Jun-rong  XU Chang-bin  TANG Ming-zhou  LU Wei  BIAN Zi-yang
Affiliation:North China Research Institute of Electro-Optics,Beijing 100015,China
Abstract:In order to use the video image information to detect and track the target in real time,based on the lightweight deep learning target detection network SSD_Mobilenetv1,by improving its network structure,using the more fine-grained feature map to participate in position regression and classification to integrate the context information of the network and introduce the inverse,the residual module improves the ability of the network to extract features.The experiment shows that the real-time detection speed is guaranteed and the detection accuracy is improved,and the training and verification on KITTI data set have achieved good results.
Keywords:deep learning  KITTI dataset  object detection
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