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A new ship detection and classification method of spaceborne SAR images under complex scene

机译:复杂场景下星载SAR图像舰船检测与分类的新方法

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Satellite remote sensing technology has always received wide attention for its developing performance of earth observation. Ship detection and classification based on spaceborne SAR images has been an attractive and intractable topic because the wide sea area is too complex to detect and classify all the objective ships. In this paper, a new ship detection and classification method for complex sea surface is presented. It adopts the visual saliency detection method based on spectral residual to obtain the locations of the regions of interest(ROIs) containing ships. And the morphology filter is employed to exclude a part of false alarm targets (FATs). Then, the types of the ships are classified based on convolution neural network (CNN). Finally, the locations and types of ships in large sea SAR images are acquired. Experimental results based on measured spaceborne SAR images have shown the effectiveness and accuracy of the proposed method.
机译:卫星遥感技术因其对地观测的发展性能一直受到广泛关注。基于星载SAR图像的船舶检测和分类一直是一个有吸引力且棘手的话题,因为宽阔的海域过于复杂,无法检测和分类所有目标船舶。本文提出了一种新的复杂海面船舶检测与分类方法。它采用基于频谱残差的视觉显着性检测方法来获得包含船舶的感兴趣区域(ROI)的位置。并且形态过滤器被用于排除一部分错误警报目标(FAT)。然后,基于卷积神经网络(CNN)对船舶的类型进行分类。最后,获得了大型海上SAR图像中船舶的位置和类型。基于测得的星载SAR图像的实验结果表明了该方法的有效性和准确性。

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