计算机与现代化

• 图像处理 • 上一篇    下一篇

改进YOLO v2的装甲车辆目标识别

  

  1. (中国人民解放军陆军炮兵防空兵学院兵器工程系,安徽合肥230031)
  • 收稿日期:2018-01-10 出版日期:2018-09-29 发布日期:2018-09-30
  • 作者简介:王曙光(1970-),男,山东邹平人,中国人民解放军陆军炮兵防空兵学院兵器工程系教授,博士,研究方向:弹载图像技术,弹药技术; 吕攀飞(1993-),男,陕西富平人,硕士研究生,研究方向:目标探测与毁伤评估,弹载图像目标识别。 改进YOLO v2的装甲车辆目标识别

Improved YOLO v2 for Target Recognition of Armored Vehicles

  1. (Department of Ordnance Engineering, Army Artillery and Air Defense Forces Academy of PLA, Hefei 230031, China) 
  • Received:2018-01-10 Online:2018-09-29 Published:2018-09-30

摘要: 军事目标识别技术是军事信息处理的一个重要内容,对于实现军事装备信息化、智能化起着不可忽视的作用。近年来随着深度卷积神经网络在图像识别领域的广泛应用,各种基于图像目标识别任务的网络结构层出不穷,因此将这项新技术应用于军事目标的识别具有极强的现实意义和军事应用价值。本文以目前具有最佳识别效果的YOLO v2网络为基础,通过维度聚类重新确定最优的anchor个数及其宽高维度,并制作以明显特征为目标区域的装甲车辆数据集,使得该网络对装甲目标的识别更为精确。通过实验验证,该方法能有效地对特定装甲目标进行实时精确识别。

关键词: 装甲目标识别, 维度聚类, YOLO v2, anchor

Abstract: The technology of military target recognition is an important part of military information processing, which plays an important role in realizing the informatization and intelligentization of military equipment. In recent years, with the wide application of convolutional neural network in image recognition field, a variety of network structures based on image recognition task emerge in an endless stream. So it is of great practical significance and military application value to apply the new technology in military target recognition. Based on the YOLO v2 network which has the best recognition effect at present, this paper redefines the optimal number of anchors and their width and height dimensions by dimension clustering, and makes the armored vehicle data set with obvious features as the target area, so that the network can recognize the armored targets more accurately. Experimental results show that the method can effectively identify the specific armored targets in real time.

Key words: armored target recognition, dimensional clustering, YOLO v2, anchor

中图分类号: