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An Improved InceptionV3 Network for Obscured Ship Classification in Remote Sensing Images

机译:用于遥感图像中的遮光船分类的改进的Inceptionv3网络

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摘要

Ship target classification plays an important role in tasks such as maritime traffic control, maritime target tracking, and military reconnaissance. The complex ocean environment often causes obscuration of the ship targets, thus resulting in low accuracy of the obscured targets. This article presents a novel target classification algorithm - improved InceptionV3 and center loss convolution neural network (IICL-CNN) - based on the well-established inception network to improve the accuracy of obscured targets. This algorithm features a new objective function, which is designed to learn common features of both the clear samples and the obscured samples and, in the meantime, reduce the intra-class distance among the obscured samples. Experiments were performed on an optical remote sensing image dataset which consisted of 48 000 ship images in nine categories. The proposed method demonstrated superior performance on the obscured ship targets compared to the original InceptionV3 model. On average, the accuracy was 4.23%, 5.98%, and 17.48% higher on the ship targets that were occluded by levels of 30%, 50%, and 70%, respectively. Our experimental results showed that the proposed IICL-CNN could effectively improve the accuracy of the ship targets at various occlusion levels.
机译:船舶目标分类在诸如海上交通管制,海上目标跟踪和军事侦察等任务中起着重要作用。复杂的海洋环境经常导致船舶目标的遮蔽,从而导致模糊目标的低精度。本文提出了一种新颖的目标分类算法 - 改进了Inceptionv3和中心损失卷积神经网络(IICL-CNN) - 基于良好的成立网络,提高了模糊目标的准确性。该算法具有新的目标函数,该函数旨在学习清晰样本和模糊样品的共同特征,并且在此期间,减少模糊样品中的课堂距离。在光遥感图像数据集上执行实验,该数据集由9个类别组成48 000艘船图像。与原始Inceptionv3模型相比,所提出的方法在模糊的船舶目标上表现出优异的性能。平均而言,船舶目标的准确度为4.23%,5.98%,分别为30%,50%和70%的含量增加17.48%。我们的实验结果表明,所提出的IICL-CNN可以有效地提高各种闭塞水平船舶目标的准确性。

著录项

  • 来源
    《Oceanographic Literature Review》 |2020年第10期|2289-2289|共1页
  • 作者

    K. Liu; S. Yu; S. Liu;

  • 作者单位

    Macquarie University Sydney NSW 2109 Australia;

    Macquarie University Sydney NSW 2109 Australia;

    Macquarie University Sydney NSW 2109 Australia;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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