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Arbitrary-Oriented Ship Detection Based on Feature Filter and KL Loss

机译:基于特征滤波器和KL损耗的任意定向船舶检测

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Although deep learning has been dominant in the field of target detection, there are still some challenges in the field of detection of ships: horizontal boundary box contains too much redundancy and noise in the scene of large scale and dense arrangement of ships, and there are many interferences in remote sensing optical images that affect the bounding box regression. Recent neural network for ship detection is generally used to extract the pixel information in the image to achieve rapid positioning and boundary box regression, or to process the dataset, so as to train a more robust network. However, these methods do not focus on the original feature map and loss functions of the target, which directly lead to the effects of ship positioning and regression. In this paper, we propose a ship detection network based on feature filter and Kullback-Leibler(KL) divergence loss function. In this paper, we propose to use mask filters on the output of the region of interest(ROI) network to remove the noise around the rotating bounding box, which is conducive to the regression of the rotating bounding box and angle in the second stage. In order to get a better bounding box, we propose to use KL loss function for regression of bounding box parameters. With the optimization of KL loss, the bounding box can better surround the ship. We carried out experiments on our own remote sensing ship image dataset for ship detection, it contains 5,126 remote sensing satellite images and more than 23800 ships in 6 categories. The dataset contains a variety of scenarios and challenges. Experiments show that the method is accurate and effective, and the bounding box has good wrapping property.
机译:虽然深入学习在目标检测领域一直占主导地位,但船舶的检测领域仍存在一些挑战:水平边界盒在大规模和船舶茂密的船舶场景中包含过多的冗余和噪音,并且存在许多在影响边界框回归的遥感光学图像中的许多干扰。最近用于船舶检测的神经网络通常用于提取图像中的像素信息以实现快速定位和边界盒回归,或处理数据集,以便训练更强大的网络。然而,这些方法不会专注于目标的原始特征图和损耗功能,直接导致船舶定位和回归的影响。在本文中,我们提出了一种基于特征滤波器和kullback-Leibler(KL)发散损失功能的船舶检测网络。在本文中,我们建议在感兴趣区域(ROI)网络的输出上使用掩模滤波器,以去除旋转边界盒周围的噪声,这有利于旋转边界盒和第二级角度的回归。为了获得更好的边界框,我们建议使用KL丢失函数来回归边界框参数。随着KL损失的优化,边界箱可以更好地环绕着船舶。我们对自己的遥感船舶图像数据集进行了实验,用于船舶检测,它包含5,126遥感卫星图像,6个类别超过23800艘船。数据集包含各种场景和挑战。实验表明,该方法准确有效,边界盒具有良好的包装性能。

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