基于自适应梯度倒数滤波红外弱小目标场景背景抑制
[1] Garcia-Garcia B, Bouwmans T, Silva A J R. Background subtraction in real applications: challenges, current models and future directions[J]. Comput Sci Rev, 2020, 35: 100204.
[2] Villar S A, Torcida S, Acosta G G. Median filtering: a new insight[J]. J Math Imaging Vis, 2017, 58(1): 130–146.
[3] Sobral A, Vacavant A. A comprehensive review of background subtraction algorithms evaluated with synthetic and real videos[J]. Comput Vis Image Understand, 2014, 122: 4–21.
[4] Bai X Z, Zhou F G. Infrared small target enhancement and detection based on modified top-hat transformations[J]. Comput Electr Eng, 2010, 36(6): 1193–1201.
[5] Goyal K, Singhai J. Review of background subtraction methods using Gaussian mixture model for video surveillance systems[J].Artif Intell Rev, 2018, 50(2): 241–259.
[6] Dong X B, Huang X S, Zheng Y B, et al. Infrared dim and small target detecting and tracking method inspired by human visual system[J]. Infrared Phys Technol, 2014, 62: 100–109.
[7] Bae T W, Kim Y C, Ahn S H, et al. An efficient two-dimensional least mean square (TDLMS) based on block statistics for small target detection[J]. J Infrared Millim Terahertz Waves, 2009,30(10): 1092–1101.
[8] Shao X P, Fan H, Lu G, et al. An improved infrared dim and small target detection algorithm based on the contrast mechanism of human visual system[J]. Infrared Phys Technol, 2012, 55(5):403–408.
[9] Kim S. Min-local-LoG filter for detecting small targets in cluttered background[J]. Electron Lett, 2011, 47(2): 105–106.
[10] Kim S, Lee J. Scale invariant small target detection by optimizing signal-to-clutter ratio in heterogeneous background for infrared search and track[J]. Pattern Recogn, 2012, 45(1): 393–406.
[11] Wang X, Ning C, Xu L Z. Spatiotemporal difference- of-Gaussians filters for robust infrared small target tracking in various complex scenes[J]. Appl Opt, 2015, 54(7):1573–1586.
[12] Xia T, Tang Y Y. Biologically inspired small infrared target detection using local contrast mechanisms[J]. Int J Wavelets Multiresolut Inf Process, 2015, 13(4): 1550025.
[13] Wang B, Dong L L, Zhao M, et al. Fast infrared maritime target detection: Binarization via histogram curve transformation[J].Infrared Phys Technol, 2017, 83: 32–44.
[14] Chen C L P, Li H, Wei Y T, et al. A local contrast method for small infrared target detection[J]. IEEE Trans Geosci Remote Sens,2014, 52(1): 574–581.
[15] Wei Y T, You X G, Li H. Multiscale patch-based contrast measure for small infrared target detection[J]. Pattern Recogn, 2016, 58:216–226.
[16] Liu J, He Z Q, Chen Z L, et al. Tiny and dim infrared target detection based on weighted local contrast[J]. IEEE Geosci Remote Sens Lett, 2018, 15(11): 1780–1784.
[17] Girshick R, Donahue J, Darrell T, et al. Rich feature hierarchies for accurate object detection and semantic segmentation[C]//2014 IEEE Conference on Computer Vision and Pattern Recognition, Columbus, OH, USA, 2014: 580–587.
[18] Zhao C M, Chen Z B, Zhang J L. Application of aircraft target tracking based on deep learning[J]. Opto-Electron Eng, 2019,46(9): 180261.赵春梅, 陈忠碧, 张建林. 基于深度学习的飞机目标跟踪应用研究[J]. 光电工程, 2019, 46(9): 180261.
[22] Candès E J, Li X D, Ma Y, et al. Robust principal component analysis?[J]. J ACM, 2011, 58(3): Article No.: 11.
[23] Gao C Q, Meng D Y, Yang Y, et al. Infrared patch-image model for small target detection in a single image[J]. IEEE Trans Image Process, 2013, 22(12): 4996–5009.
[24] Dai Y M, Wu Y Q. Reweighted infrared patch-tensor model with both nonlocal and local priors for single-frame small target detection[J]. IEEE J Sel Top Appl Earth Observ Remote Sens,2017, 10(8): 3752–3767.
[25] Wang X Y, Peng Z M, Kong D H, et al. Infrared dim target detection based on total variation regularization and principal component pursuit[J]. Image Vis Comput, 2017, 63: 1–9.
[26] Zhang L D, Peng Z M. Infrared small target detection based on partial sum of the tensor nuclear norm[J]. Remote Sens, 2019,11(4): 382.
[27] Li J C, Shen Z K. Small moving target detection in clutter infrared background[J]. Infrared Laser Eng, 1997, 26(6): 8–13.李吉成, 沈振康. 红外起伏背景下运动点目标的检测方法[J]. 红外与激光工程, 1997, 26(6): 8–13.
[28] Li Z Z, Dong N L, Jin G, et al. Dim small Target detection in strong undulant clutter background based on adaptive filter[J].Chin J Sci Instrum, 2004, 25(S1): 663–665.李正周, 董能力, 金钢, 等. 基于自适应滤波的强起伏背景下弱小目标检测[J]. 仪器仪表学报, 2004, 25(S1): 663–665.
[29] Fan X S, Xu Z Y, Zhang J L. Infrared dim and small target background suppression based on improved gradient inverse weighting filter[J]. Opto-Electron Eng, 2017, 44(7): 719–724.樊香所, 徐智勇, 张建林. 改进梯度倒数加权滤波红外弱小目标背景抑制[J]. 光电工程, 2017, 44(7): 719–724.
李飚, 徐智勇, 王琛, 张建林, 汪相如, 樊香所. 基于自适应梯度倒数滤波红外弱小目标场景背景抑制[J]. 光电工程, 2021, 48(8): 210122. Li Biao, Xu Zhiyong, Wang Chen, Zhang Jianlin, Wang Xiangru, Fan Xiangsuo. Background suppression for infrared dim small target scene based on adaptive gradient reciprocal filtering[J]. Opto-Electronic Engineering, 2021, 48(8): 210122.