4.7 Article

Ship Detection in Optical Remote Sensing Images Based on Saliency and a Rotation-Invariant Descriptor

期刊

REMOTE SENSING
卷 10, 期 3, 页码 -

出版社

MDPI
DOI: 10.3390/rs10030400

关键词

remote sensing; visual saliency; radial gradient transform; covariance matrix; Gaussian SVM

资金

  1. National Defense Pre-Research Foundation of China [402040203]
  2. Programs Foundation of Key Laboratory of Airborne Optical Imaging and Measurement, Chinese Academy of Science [y3hc1sr141]

向作者/读者索取更多资源

Major challenges for automatic ship detection in optical remote sensing (ORS) images include cloud, wave, island, wake clutters, and even the high variability of targets. This paper presents a practical ship detection scheme to resolve these existing issues. The scheme contains two main coarse-to-fine stages: prescreening and discrimination. In the prescreening stage, we construct a novel visual saliency detection method according to the difference of statistical characteristics between highly non-uniform regions which allude to regions of interest (ROIs) and homogeneous backgrounds. It can serve as a guide for locating candidate regions. In this way, not only can the targets be precisely detected, but false alarms are also significantly reduced. In the discrimination stage, to get a better representation of the target, both shape and texture features characterizing the ship target are extracted and concatenated as a feature vector for subsequent classification. Moreover, the combined feature is invariant to the rotation. Finally, a trainable Gaussian support vector machine (SVM) classifier is performed to validate real ships out of ship candidates. We demonstrate the superior performance of the proposed hierarchical detection method with detailed comparisons to existing efforts.

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