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A subclass supported convolutional neural network for object detection and localization in remote-sensing images

机译:支持子类的卷积神经网络,用于遥感图像中的目标检测和定位

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摘要

This article proposes a novel subclass-based classifier based on convolutional neural networks (CNNs) for detecting objects more accurately on remote-sensing images. The proposed classifier, called subclass supported CNN (SSCNN), is used to separate the representation of the objects into subclasses such as nearcentre, centre, and border depending on the distance of the object centre to obtain more effective feature extractor. A three-stage object recognition framework is used to evaluate the performance of the proposed classifier. In the first of these stages, the Selective Search algorithm generates object proposals from the image. Then, the proposed SSCNN classifies the proposals. Finally, subclass-based localization evaluation function has been proposed to calculate the localization of the object with classification results. Due to the limited number of satellite image samples, pretrained AlexNet is used by transfer learning approach to build effective feature extractor. The proposed method has been compared with region-based CNN (R-CNN) on a four-class remote-sensing test dataset consisting of 411 airplanes, 240 baseball diamonds, 468 storage tanks, and 83 ground track fields. In addition, Faster R-CNN has been trained with SSCNN features and the performances of the trained Faster R-CNNs are comparatively evaluated on 10-class remote-sensing image dataset. Experiment results have shown that the proposed framework can locate the objects precisely.
机译:本文提出了一种基于卷积神经网络(CNN)的新颖的基于子类的分类器,用于在遥感图像上更准确地检测物体。所提出的分类器称为支持子类的CNN(SSCNN),用于根据对象中心的距离将对象的表示分为子类,如近中心,中心和边界,以获得更有效的特征提取器。一个三阶段的对象识别框架用于评估提出的分类器的性能。在这些阶段的第一个阶段,“选择性搜索”算法从图像生成对象建议。然后,提议的SSCNN对提议进行分类。最后,提出了基于子类的定位评估功能,以分类结果计算目标的定位。由于卫星图像样本的数量有限,转移学习方法使用了预训练的AlexNet来构建有效的特征提取器。该方法已与基于区域的CNN(R-CNN)进行了四类遥感测试数据集的比较,该数据集包括411架飞机,240枚棒球钻石,468个储油罐和83个地面跑道。此外,已对Faster R-CNN进行了SSCNN功能训练,并在10类遥感图像数据集上对经过评估的Faster R-CNN的性能进行了比较评估。实验结果表明,所提出的框架可以精确定位物体。

著录项

  • 来源
    《International journal of remote sensing》 |2019年第12期|4193-4212|共20页
  • 作者

    Kilic Ersin; Ozturk Serkan;

  • 作者单位

    Zonguldak Bulent Ecevit Univ, Comp Engn, Zonguldak, Turkey|Erciyes Univ, Comp Engn, Kayseri, Turkey;

    Erciyes Univ, Comp Engn, Kayseri, Turkey;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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