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Accurate Bounding box for Ship Detection On Remote Sensing Images With Complex Background

机译:复杂背景下遥感影像船舶检测的精确边界框

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The detection of ship targets in remote sensing satellite images is an important means to obtain all ships on the sea surfaceby satellite image. It can realize the monitoring of sea surface resources, so it has important civil and military significance.Because of the complex background, ship detection in harbour is one of the difficulties. In recent years, many targetdetection methods based on deep learning have been proposed, and they have achieved good results in natural scene images.YOLOv3 is an advanced end-to-end method because of its high detection accuracy and fast detection speed. But evenadvanced methods have their shortcomings in this task. Ships in port usually dock side by side, which leads to misseddetection of many targets when NMS (Non-Maximum Suppression) operation is performed on the predicted boundingboxes. In this paper, we replace the original NMS with Soft-NMS on the basis of YOLOv3. This operation makes thedetector miss fewer targets. At the same time, we added IoU loss when calculating the loss of the prediction box andground truth box. IoU loss takes the prediction box and the IoU value of its corresponding ground truth box as theevaluation criterion, which makes the target box generated by the detector more fitted to the target. In order to validate theeffectiveness of the proposed algorithm, we use harbour remote sensing data collected from Google image and GaoFen-2(GF-2) satellite, the experimental results show good performance of the proposed method in the detection of ship targetsin harbour.
机译:遥感卫星图像中船舶目标的检测是在海上获取所有船舶的重要手段 通过卫星图像。它可以实现对海表资源的监测,因此具有重要的军事和军事意义。 由于背景复杂,在港口进行船舶检测是困难之一。近年来,许多目标 提出了一种基于深度学习的图像检测方法,在自然场景图像中取得了良好的效果。 YOLOv3具有较高的检测精度和快速的检测速度,是一种先进的端到端方法。但是,即使 先进的方法在此任务中有其缺点。通常在港口的船舶并排停靠,导致错过 在预测边界上执行NMS(非最大抑制)操作时,可以检测到许多目标 盒子。在本文中,我们在YOLOv3的基础上用Soft-NMS代替了原始的NMS。此操作使 探测器错过的目标更少。同时,我们在计算预测框的损失时添加了IoU损失, 地面真相框。 IoU损耗将预测框及其对应的地面真实框的IoU值用作 评估标准,使检测器生成的目标盒更适合目标。为了验证 该算法的有效性,我们使用了从Google图像和GaoFen-2收集的港口遥感数据 (GF-2)卫星,实验结果表明,该方法在舰船目标检测中具有良好的性能 在海港。

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