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Evaluating generative adversarial networks based image-level domain transfer for multi-source remote sensing image segmentation and object detection

机译:基于多源遥感图像分割和对象检测的基于生成的对抗网络级域传输的基于生成的对抗网络传输

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摘要

Appearances and qualities of remote sensing images are affected by different atmospheric conditions, quality of sensors, and radiometric calibrations. This heavily challenges the generalization ability of a deep learning or other machine learning model: the performance of a model pretrained on a source remote sensing data set can significantly decrease when applied to a different target data set. The popular generative adversarial networks (GANs) can realize style or appearance transfer between a source and target data sets, which may boost the performance of a deep learning model through generating new target images similar to source samples. In this study, we comprehensively evaluate the performance of GAN-based image-level transfer methods on convolutional neural network (CNN) based image processing models that are trained on one dataset and tested on another one. Firstly, we designed the framework for the evaluation process. The framework consists of two main parts, the GAN-based image-level domain adaptation, which transfers a target image to a new image with similar probability distribution of source image space, and the CNN-based image processing tasks, which are used to test the effects of GAN-based domain adaptation. Second, the domain adaptation is implemented with two mainstream GAN methods for style transfer, the CycleGAN and the AgGAN. The image processing contains two major tasks, segmentation and object detection. The former and the latter are designed based on the widely applied U-Net and Faster R-CNN, respectively. Finally, three experiments, associated with three datasets, are designed to cover different application cases, a change detection case where temporal data is collected from the same scene, a two-city case where images are collected from different regions and a two-sensor case where images are obtained from aerial and satellite platforms respectively. Results revealed that, the GAN-based image transfer can significantly boost the performance of the segmentation model in the change detection case, however, it did not surpass conventional methods; in the other two cases, the GAN-based methods obtained worse results. In object detection, almost all the methods failed to boost the performance of the Faster R-CNN and the GAN-based methods performed the worst.
机译:遥感图像的外观和素质受到不同大气条件,传感器质量和辐射校准的影响。这重大挑战了深度学习或其他机器学习模型的泛化能力:当应用于不同的目标数据集时,在源遥感数据集上返回的模型的性能可以显着降低。受欢迎的生成对冲网络(GANS)可以在源和目标数据集之间实现风格或外观传输,这可以通过生成类似于源样本的新目标图像来提高深度学习模型的性能。在本研究中,我们全面评估了基于GaN的图像级传输方法对卷积神经网络(CNN)的图像处理模型的性能,这些图像处理模型在一个数据集上训练并在另一个数据集上进行测试。首先,我们设计了评估过程的框架。该框架由两个主要部分组成,基于GaN的图像级域适配,它将目标图像传送到具有类似源图像空间的概率分布的新图像,以及用于测试的CNN的图像处理任务基于GaN的域改编的影响。其次,使用两个主流GaN方法实现域改编,用于风格转移,Cycleangan和Aggan。图像处理包含两个主要任务,分段和对象检测。前者和后者分别基于广泛应用的U-NET和更快的R-CNN设计。最后,设计了与三个数据集相关联的三个实验,旨在涵盖不同的应用程序,其中从同一场景中收集时间数据的改变检测情况,其中从不同区域和两个传感器壳体收集图像的两个城市情况其中图像分别从天线和卫星平台获得。结果表明,GaN的图像转移可以显着提高在变化检测情况下分割模型的性能,但是,它没有超越常规方法;在另外两种情况下,基于GaN的方法获得了更差的结果。在对象检测中,几乎所有方法都未能提高更快的R-CNN的性能,并且对最坏的方法进行了基于GaN的方法。

著录项

  • 来源
    《International journal of remote sensing》 |2020年第20期|7343-7367|共25页
  • 作者单位

    Chinese Acad Surveying & Mapping Inst Photogrammetry & Remote Sensing Beijing Peoples R China;

    Wuhan Univ Sch Remote Sensing & Informat Engn 129 Luoyu Rd Wuhan 430079 Peoples R China;

    Wuhan Univ Sch Remote Sensing & Informat Engn 129 Luoyu Rd Wuhan 430079 Peoples R China;

    Chinese Acad Surveying & Mapping Inst Photogrammetry & Remote Sensing Beijing Peoples R China;

    Univ Utrecht Fac Geosci Dept Phys Geog Utrecht Netherlands;

  • 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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