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Ship Target Segmentation and detection in Complex Optical Remote Sensing Image Based on Component Tree Characteristics Discrimination

机译:基于分量树特征辨别的复杂光学遥感图像中的船舶目标分割和检测

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Under the application background of sea-surface target surveillance based on optical remote sensing image, automatic sea-surface ship target recognition with complicated background is discussed in this paper. The technology this article focused on is divided into two parts, feature classification training and component class discrimination. In the feature classification training process, large numbers of sample images are used for feature selection and classifier determination of ship targets and false targets. Component tree characteristics discrimination achieves extraction of suspected target areas from complicated remote sensing image, and their features are entered to Fisher for ship target recognition. Experimental results show that the method discussed in this paper can deal with complex sea surface environment, and can avoid the interference of cloud cover, sea clutter and islands. The method can effectively achieve ship target recognition in complex sea background.
机译:在基于光学遥感图像的海面目标监控的应用背景下,本文讨论了自动海面船舶目标识别与复杂的背景。该技术专注于两部分,特征分类培训和组成阶层歧视。在特征分类培训过程中,大量的示例图像用于特征选择和分类器确定船舶目标和假目标。组件树特征歧视实现了复杂的遥感图像的疑似目标区域的提取,并且它们的功能被输入到Fisher进行船舶目标识别。实验结果表明,本文讨论的方法可处理复杂的海面环境,并可以避免云覆盖,海杂波和岛屿的干扰。该方法可以有效地实现复杂海洋背景中的船舶目标识别。

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