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Super resolution land cover mapping of hyperspectral images using the deep image prior-based approach

机译:利用深映像基于近似的方法的超光谱图像的超分辨率覆盖映射

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摘要

Due to the instantaneous field-of-view (IFOV) of the sensor and diversity of land cover types, some pixels, usually named mixed pixels, contain more than one land cover type. Soft classification can predict the portion of each land cover type in mixed pixels in the absence of spatial distribution. The spatial distribution information in mixed pixels can be solved by super resolution mapping (SRM). Typically, SRM involves two steps: soft class value estimation, which is similar to the image super resolution of image restoration, and land cover allocation. A new SRM approach utilizes a deep image prior (DIP) strategy combined with a super resolution convolutional neural network (SRCNN) to estimate fine resolution fraction images for each land cover type; then, a simple and efficient classifier is used to allocate subpixel land cover types under the constraint of the generated fine fraction images. The proposed approach can use prior information of input images to update network parameters and no longer require training data. Experiments on three different cases demonstrate that the subpixel classification accuracy of the proposed DIP-based SRM approach is significantly better than the three conventional SRM approaches and a transfer learning-based neural network SRM approach. In addition, the DIP-SRM approach performs very robustly about small-area objects within multiple land cover types and significantly reduces soft classification uncertainty. The results of this paper provide an extension for utilizing SRCNN to address SRM issues in hyperspectral images.
机译:由于传感器的瞬时视野(IFOV)和陆地覆盖类型的多样性,一些像素通常被命名为混合像素,包含多于一个土地覆盖类型。软分类可以在没有空间分布的情况下预测混合像素中的每个陆地覆盖类型的一部分。混合像素中的空间分布信息可以通过超分辨率映射(SRM)来解决。通常,SRM涉及两个步骤:软类值估计,类似于图像恢复的图像超分辨率,以及陆地覆盖分配。一种新的SRM方法利用了EDED图像的(DIP)策略与超分辨率卷积神经网络(SRCNN)相结合,以估计每个陆地覆盖类型的精细分辨率分数图像;然后,使用简单高效的分类器来在产生的细分数图像的约束下分配子像素覆盖类型。所提出的方法可以使用输入图像的先前信息来更新网络参数,不再需要培训数据。三种不同案例的实验表明,所提出的基于DIP的SRM方法的子像素分类精度明显优于三种传统的SRM方法和基于转移学习的神经网络SRM方法。此外,DIP-SRM方法在多种陆地覆盖类型内的小区域物体上表现得非常坚固,并且显着降低软分类不确定性。本文的结果提供了利用SRCNN在高光谱图像中解决SRM问题的扩展。

著录项

  • 来源
    《International journal of remote sensing》 |2020年第8期|2818-2834|共17页
  • 作者单位

    China Univ Geosci Sch Land Sci & Technol Beijing 100083 Peoples R China;

    China Univ Geosci Sch Land Sci & Technol Beijing 100083 Peoples R China;

    Curtin Univ Sch Design & Built Environm Perth WA Australia;

  • 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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