:A novel visual attention method for target detection from SAR images论文

:A novel visual attention method for target detection from SAR images论文

本文主要研究内容

作者(2019)在《A novel visual attention method for target detection from SAR images》一文中研究指出:Synthetic Aperture Radar(SAR) imaging systems have been widely used in civil and military fields due to their all-weather and all-day abilities and various other advantages. However, due to image data exponentially increasing, there is a need for novel automatic target detection and recognition technologies. In recent years, the visual attention mechanism in the visual system has helped humans effectively deal with complex visual signals. In particular, biologically inspired top-down attention models have garnered much attention recently. This paper presents a visual attention model for SAR target detection, comprising a bottom-up stage and top-down process.In the bottom-up step, the Itti model is improved based on the difference between SAR and optical images. The top-down step fully utilizes prior information to further detect targets. Extensive detection experiments carried out on the benchmark Moving and Stationary Target Acquisition and Recognition(MSTAR) dataset show that, compared with typical visual models and other popular detection methods, our model has increased ability and robustness for SAR target detection, under a range of Signal to Clutter Ratio(SCR) conditions and scenes. In addition, results obtained using only the bottom-up stage are inferior to those of the proposed method, further demonstrating the effectiveness and rationality of a top-down strategy. In summary, our proposed visual attention method can be considered a potential benchmark resource for the SAR research community.

Abstract

Synthetic Aperture Radar(SAR) imaging systems have been widely used in civil and military fields due to their all-weather and all-day abilities and various other advantages. However, due to image data exponentially increasing, there is a need for novel automatic target detection and recognition technologies. In recent years, the visual attention mechanism in the visual system has helped humans effectively deal with complex visual signals. In particular, biologically inspired top-down attention models have garnered much attention recently. This paper presents a visual attention model for SAR target detection, comprising a bottom-up stage and top-down process.In the bottom-up step, the Itti model is improved based on the difference between SAR and optical images. The top-down step fully utilizes prior information to further detect targets. Extensive detection experiments carried out on the benchmark Moving and Stationary Target Acquisition and Recognition(MSTAR) dataset show that, compared with typical visual models and other popular detection methods, our model has increased ability and robustness for SAR target detection, under a range of Signal to Clutter Ratio(SCR) conditions and scenes. In addition, results obtained using only the bottom-up stage are inferior to those of the proposed method, further demonstrating the effectiveness and rationality of a top-down strategy. In summary, our proposed visual attention method can be considered a potential benchmark resource for the SAR research community.

论文参考文献

  • [1].A baseband circuit for wake-up receivers with double-mode detection and enhanced sensitivity robustness[J]. 朱文锐,杨海钢,高同强,刘飞,程小燕,张丹丹.  Journal of Semiconductors.2013(08)
  • [2].也谈robustness的中文定名[J]. 陈肇元.  中国科技术语.2007(01)
  • [3].Power-efficient heterodyne radio over fiber link with laser phase noise robustness[J]. 蔡沅成,高翔,凌云,许渤,邱昆.  Chinese Optics Letters.2019(11)
  • [4].The robustness of contextuality and the contextuality cost of empirical models[J]. HuiXian Meng,HuaiXin Cao,WenHua Wang.  Science China(Physics,Mechanics & Astronomy).2016(04)
  • [5].Content-based image hashing using wave atoms[J]. 刘芳,梁瀚贤,郑利明,季晓勇.  Chinese Physics B.2012(04)
  • [6].Degree distribution and robustness of cooperative communication network with scale-free model[J]. 王建荣,王建萍,何振,许海涛.  Chinese Physics B.2015(06)
  • [7].A Robust Deadbeat Control Method for UPS Inverters[J]. 汪孟,李方正,黄立培,SAKANE Makoto.  电工电能新技术.2007(04)
  • [8].Analysis and Design of Multi-aspect SAR System for Compressive Sensing-Based 3D Imaging[J]. ZHOU Hanfei,SU Yi,XI Zemin,LU Jianbin.  Chinese Journal of Electronics.2014(03)
  • [9].ROBUSTNESS ANALYSIS OF LEADER-FOLLOWER CONSENSUS[J]. Iven MAREELS.  Journal of Systems Science & Complexity.2009(02)
  • [10].Detection of small targets with adaptive binarization threshold in infrared video sequences[J]. 杨磊,杨杰.  Chinese Optics Letters.2006(03)
  • 论文详细介绍

    论文作者分别是来自Chinese Journal of Aeronautics的,发表于刊物Chinese Journal of Aeronautics2019年08期论文,是一篇关于,Chinese Journal of Aeronautics2019年08期论文的文章。本文可供学术参考使用,各位学者可以免费参考阅读下载,文章观点不代表本站观点,资料来自Chinese Journal of Aeronautics2019年08期论文网站,若本站收录的文献无意侵犯了您的著作版权,请联系我们删除。

    标签:;  

    :A novel visual attention method for target detection from SAR images论文
    下载Doc文档

    猜你喜欢