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Cnn Based Renormalization Method for Ship Detection in Vhr Remote Sensing Images

机译:基于CNN的VHR遥感图像船舶检测的重新运算方法

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Ship detection with very high resolution (VHR) remote sensing image has recently been an attractive topic due to rapid development of deep learning. Current researches on ship detection are generally confronted with a big challenge that existing methods failed to get high quality of object proposal with good intersection-over-union (IOU) before detection. In this paper, a Convolutional Neural Network (CNN) based renormalization method is proposed to improve the quality of object proposal. First, CNN is used to predict shape information of candidate ships' which are involved with rotation, location and scale in patches. Then, a renormalization net is designed to adjust the candidate ships in patches by correcting the shape information and renormalizing it to uniform patch. In this way, good candidate objects in patches could be generated and will be helpful with improving following ship detection. The proposed renormalization net was tested on a Google-Earth handcraft dataset. The experimental result demonstrates the proposed renormalization net greatly improve the ship detection with both of good detection accuracy and high IOU.
机译:船舶检测具有非常高分辨率(VHR)遥感图像最近是由于深度学习的快速发展而有吸引力的话题。目前对船舶检测的研究通常面临着现有方法未能获得高质量的对象建议,在检测前具有良好的交叉联盟(iou)的大量挑战。本文提出了一种基于卷积神经网络(CNN)的重修化方法,提高了对象提案的质量。首先,CNN用于预测候选船舶的形状信息,其涉及旋转,位置和曲线。然后,旨在通过校正形状信息并将其重新运到均匀贴片来调节贴片中的候选船舶。通过这种方式,可以生成修补程序中的良好候选对象,并将有助于改善以下船舶检测。在Google地球手工数据集上测试了所提出的重新运行。实验结果表明,拟议的重修化净极大地改善了船舶检测,具有良好的检测精度和高iou。

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