光学 精密工程, 2017, 25 (5): 1300, 网络出版: 2017-06-30   

基于视觉显著性的无监督海面舰船检测与识别

Detection and identification of unsupervised ships and warships on sea surface based on visual saliency
作者单位
1 中国科学院 长春光学精密机械与物理研究所, 航空光学成像与测量重点实验室, 吉林 长春 130033
2 中国科学院大学, 北京 100049
摘要
在航天航空光学遥感舰船目标检测中, 受大气、光照、云雾和海岛等海面不确定条件的影响, 传统的舰船检测方法存在检测效率低和可靠性差等问题, 因此, 本文提出一种无监督海面舰船目标自动检测方法。该方法以视觉显著性为依据, 结合多显著性检测模型快速搜索海面目标, 生成显著图后对其进行粗分割, 对提取的目标切片做标记并进行精细分割, 利用改进的Hough变换旋转目标主轴以保证目标对Y轴的对称性; 对可能检测到的厚重云层和岛屿等伪目标使用梯度方向特征进行鉴别, 通过判定目标在360°范围内8个区间的梯度幅度统计值, 确认舰船目标及去除伪目标。实验结果表明, 该舰船检测方法能够成功提取海面上大小不同, 位置随机分布的舰船目标, 准确获取舰船目标的数量和位置信息, 在大量真实光学遥感图像上的测试结果显示, 本文方法检测准确率高于93%, 通过目标鉴别处理, 剔除伪目标后, 虚警率可低于4%, 鲁棒性较强。
Abstract
In target detection on aerospace optical remote sensing, due to the interference of uncertain conditions on sea surface such as atmosphere, solar radiation, cloud and mist, islands and others, traditional ship detection methods always have some defects such as low detection efficiency, poor reliability. Therefore, the author proposed an unsupervised ship automatic detection method. In this method, visual saliency was combined with multi-saliency detection model for fast searching of sea-surface targets; after saliency map was generated, a rough segmentation was conducted on it, then extracted target slice was marked and fine segmentation was implemented, subsequently, improved Hough transformation was used to rotate principal axis of target for ensuring the symmetry of targets to Y axis; the characteristics of gradient direction was applied to recognize phony targets such as thick clouds layer, islands and others that may be detected, the gradient and amplitude statistical value of those targets in 8 intervals on all directions were judged to identify target ships and warships and eliminate phony targets. The experimental result indicates that the detection method of ships and warships can be used to successfully extract target ships and warships which are in different size and random distributed on sea surface for obtaining accurate quantity and location information about them. In test on a large number of authentic optical remote sensing pictures, the detection accuracy rate of proposed method is higher than 93%, while the false alarm rate is lower than 4% through target identification and treatment and phony target elimination, which has strong robustness.
参考文献

[1] GUO W Y, XIA X ZH, WANG X F. A remote sensing ship recognition method based on dynamic probability generative model [J]. Expert Systems with Applications, 2014, 41(14): 6446-6458.

[2] 王刚, 陈永光, 杨锁昌, 等. 采用图像块对比特性的红外弱小目标检测[J].光学 精密工程, 2015, 23(5): 1424-1433.

    WANG G, CHEN Y G, YANG S CH, et al.. Detection of infrared dim small target based on image patch contrast [J]. Opt. Precision Eng., 2015, 23(5): 1424-1433.(in Chinese)

[3] CORBANE C, NAIMAN L, PECOUL E, et al.. A complete processing chain for ship detection using optical satellite imagery [J]. International Journal of Remote Sensing, 2010, 31(22): 5837-5854.

[4] YANG G, LI B, JI S F, et al.. Ship detection from optical satellite images based on sea surface analysis [J]. IEEE Geoscience and Remote Sensing Letters, 2014, 11(3): 641-645.

[5] 苏丽, 庞迪. 全景海域图像中的圆形海天线提取[J]. 光学 精密工程, 2015, 23(11): 3279-3288.

    SU L, PANG D. Circle sea-sky-line extraction in panoramic images [J]. Opt. Precision Eng., 2015, 23(11): 3279-3288.(in Chinese)

[6] TANG J X, DENG C W, HUANG G B, et al.. Compressed-domain ship detection on spaceborne optical image using deep neural network and extreme learning machine [J]. IEEE Transactions on Geoscience and Remote Sensing, 2015, 53(3): 1174-1185.

[7] 王丽, 魏巍, 吴林刚, 等. SAR图像目标识别新方法[J].液晶与显示, 2014, 29(3): 429-434.

    WANG L, WEI W, WU L G, et al.. Novel target recognition method for SAR images [J]. Chinese Journal of Liquid Crystals and Displays, 2014, 29(3): 429-434. (in Chinese)

[8] QI S X, MA J, LIN J, et al.. Unsupervised ship detection based on saliency and S-HOG descriptor from optical satellite images [J]. IEEE Geoscience and remote Sensing Letters, 2015, 12(7): 1451-1455.

[9] ZHANG Y G, ZHANG L B, YU X C. Region of interest extraction based on multiscale visual saliency analysis for remote sensing images [J].Journal of Applied Remote Sensing, 2015, 9, 095050-1-095050-15.

[10] ITTI L, KOCH C, NIEBUR E. A model of saliency-based visual attention for rapid scene analysis [J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 1998, 20(11): 1254-1259.

[11] BRUCE N D B, TSOTSOS J K. Saliency based on information maximization [J].Advances in Neural Information Processing Systems, 2006, 18(5): 155-162.

[12] HAREL J, KOCH C, PERONA P. Graph-based visual saliency [J].Advances in Neural Information Processing Systems, 2006, 19: 545-552.

[13] STAS G, LIHI Z M, AYELLET T. Context-aware saliency detection [J].IEEE Transactions on Pattern Analysis and Machine Intelligence, 2012, 34(10): 1915-1926.

[14] ACHANTA R, HEMAMI S, ESTRADA F, et al.. Frequency-tuned salient region detection [C]. IEEE Conference on Computer Vision and Pattern Recognition, 2009: 1597-1604.

[15] CHENG M M, ZHANG G X, MITRA N J, et al.. Global contrast based salient region detection [J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2011, 37(3): 409-416.

[16] HOU X D, ZHANG L. Saliency detection: a spectral residual approach [C].IEEE Conference on Computer Vision and Pattern Recognition, Minneapolis, 2007: 1-8.

[17] GUO C L, MA Q, ZHANG L M. Spatio-temporal saliency detection using phase spectrum of quaternion Fourier transform [C]. IEEE Conference on Computer Vision and Pattern Recognition, Minneapolis, 2008: 1-8.

[18] 杜慧, 张涛, 张叶, 等. 基于空频域结合的显著目标检测[J]. 液晶与显示, 2016, 31(9): 913-920.

    DU H, ZHANG T, ZHANG Y, et al.. Saliency detection based on frequency domain combined with spatial domain [J]. Chinese Journal of Liquid Crystals and Displays, 2016, 31(9): 913-920. (in Chinese)

[19] LI J, LEVINE M D, AN X J, et al.. Visual saliency based on scale-space analysis in the frequency domain [J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2012, 35(4): 996-1010.

[20] 张颖颖, 张帅, 张萍, 等. 融合对比度和分布性的图像显著性区域检测[J]. 光学 精密工程, 2014, 22(4): 1012-1019.

    ZHANG Y Y, ZHANG SH, ZHANG P, et al.. Detection of salient maps by fusion of contrast and distribution [J]. Opt. Precision Eng., 2014, 22(4): 1012-1019. (in Chinese)

[21] 李炳燮, 马张宝, 齐清文, 等. Landsat TM遥感影像中厚云和阴影去除[J]. 遥感学报, 2010, 14(3): 534-545.

    LI B X, MA ZH B, QI Q W, et al.. Cloud and shadow removal from Landsat TM data [J]. Journal of Remote Sensing, 2010, 14(3): 534-545. (in Chinese)

[22] PROIA N, PAG V. Characterization of a Bayesian ship detection method in optical satellite images [J]. IEEE Geoscience and Remote Sensing Letters, 2010, 7(2): 226-230.

徐芳, 刘晶红, 曾冬冬, 王宣. 基于视觉显著性的无监督海面舰船检测与识别[J]. 光学 精密工程, 2017, 25(5): 1300. XU Fang, LIU Jing-hong, ZENG Dong-dong, WANG Xuan. Detection and identification of unsupervised ships and warships on sea surface based on visual saliency[J]. Optics and Precision Engineering, 2017, 25(5): 1300.

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