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Spatial, Temporal and Spectral Satellite Image Fusion via Sparse Representation.

机译:通过稀疏表示进行时空,时空和光谱卫星图像融合。

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摘要

Remote sensing provides good measurements for monitoring and further analyzing the climate change, dynamics of ecosystem, and human activities in global or regional scales. Over the past two decades, the number of launched satellite sensors has been increasing with the development of aerospace technologies and the growing requirements on remote sensing data in a vast amount of application fields. However, a key technological challenge confronting these sensors is that they tradeoff between spatial resolution and other properties, including temporal resolution, spectral resolution, swath width, etc., due to the limitations of hardware technology and budget constraints. To increase the spatial resolution of data with other good properties, one possible cost-effective solution is to explore data integration methods that can fuse multi-resolution data from multiple sensors, thereby enhancing the application capabilities of available remote sensing data. In this thesis, we propose to fuse the spatial resolution with temporal resolution and spectral resolution, respectively, based on sparse representation theory.;Taking the study case of Landsat ETM+ (with spatial resolution of 30m and temporal resolution of 16 days) and MODIS (with spatial resolution of 250m ~ 1km and daily temporal resolution) reflectance, we propose two spatial-temporal fusion methods to combine the fine spatial information of Landsat image and the daily temporal resolution of MODIS image. Motivated by that the images from these two sensors are comparable on corresponding bands, we propose to link their spatial information on available Landsat- MODIS image pair (captured on prior date) and then predict the Landsat image from the MODIS counterpart on prediction date. To well-learn the spatial details from the prior images, we use a redundant dictionary to extract the basic representation atoms for both Landsat and MODIS images based on sparse representation. Under the scenario of two prior Landsat-MODIS image pairs, we build the corresponding relationship between the difference images of MODIS and ETM+ by training a low- and high-resolution dictionary pair from the given prior image pairs. In the second scenario, i.e., only one Landsat- MODIS image pair being available, we directly correlate MODIS and ETM+ data through an image degradation model. Then, the fusion stage is achieved by super-resolving the MODIS image combining the high-pass modulation in a two-layer fusion framework. Remarkably, the proposed spatial-temporal fusion methods form a unified framework for blending remote sensing images with phenology change or land-cover-type change.;Based on the proposed spatial-temporal fusion models, we propose to monitor the land use/land cover changes in Shenzhen, China. As a fast-growing city, Shenzhen faces the problem of detecting the rapid changes for both rational city planning and sustainable development. However, the cloudy and rainy weather in region Shenzhen located makes the capturing circle of high-quality satellite images longer than their normal revisit periods. Spatial-temporal fusion methods are capable to tackle this problem by improving the spatial resolution of images with coarse spatial resolution but frequent temporal coverage, thereby making the detection of rapid changes possible. On two Landsat-MODIS datasets with annual and monthly changes, respectively, we apply the proposed spatial-temporal fusion methods to the task of multiple change detection.;Afterward, we propose a novel spatial and spectral fusion method for satellite multispectral and hyperspectral (or high-spectral) images based on dictionary-pair learning and sparse non-negative matrix factorization. By combining the spectral information from hyperspectral image, which is characterized by low spatial resolution but high spectral resolution and abbreviated as LSHS, and the spatial information from multispectral image, which is featured by high spatial resolution but low spectral resolution and abbreviated as HSLS, this method aims to generate the fused data with both high spatial and high spectral resolutions. Motivated by the observation that each hyperspectral pixel can be represented by a linear combination of a few endmembers, this method first extracts the spectral bases of LSHS and HSLS images by making full use of the rich spectral information in LSHS data. The spectral bases of these two categories data then formulate a dictionary-pair due to their correspondence in representing each pixel spectra of LSHS data and HSLS data, respectively. Subsequently, the LSHS image is spatially unmixed by representing the HSLS image with respect to the corresponding learned dictionary to derive its representation coefficients. Combining the spectral bases of LSHS data and the representation coefficients of HSLS data, we finally derive the fused data characterized by the spectral resolution of LSHS data and the spatial resolution of HSLS data.
机译:遥感为监测和进一步分析全球或区域范围内的气候变化,生态系统动态和人类活动提供了良好的度量。在过去的二十年中,随着航天技术的发展以及在众多应用领域中对遥感数据的需求不断增长,已发射卫星传感器的数量一直在增加。然而,由于硬件技术的限制和预算的限制,这些传感器面临的关键技术挑战是它们在空间分辨率和其他属性(包括时间分辨率,光谱分辨率,条幅宽度等)之间进行权衡。为了提高具有其他良好属性的数据的空间分辨率,一种可行的具有成本效益的解决方案是探索可以融合来自多个传感器的多分辨率数据的数据集成方法,从而增强可用遥感数据的应用能力。本文提出了基于稀疏表示理论的空间分辨率与时间分辨率和频谱分辨率的融合方法。以Landsat ETM +(空间分辨率为30m,时间分辨率为16天)和MODIS(在250m〜1km的空间分辨率和每日时间分辨率)反射率的基础上,我们提出了两种时空融合方法,将Landsat图像的精细空间信息与MODIS图像的每日时间分辨率相结合。由于这两个传感器的图像在相应的波段上具有可比性,因此我们建议将其空间信息链接到可用的Landsat-MODIS图像对(在先前日期捕获),然后在预测日期根据MODIS对应物预测Landsat图像。为了从先前的图像中很好地学习空间细节,我们使用了一个冗余字典来基于稀疏表示提取Landsat和MODIS图像的基本表示原子。在两个先前的Landsat-MODIS图像对的情况下,我们通过训练来自给定先前图像对的低分辨率和高分辨率字典对来建立MODIS和ETM +的差异图像之间的对应关系。在第二种情况下,即只有一对Landsat-MODIS图像对可用,我们通过图像降级模型直接关联MODIS和ETM +数据。然后,通过在两层融合框架中对高通调制进行组合的超分辨MODIS图像来实现融合阶段。值得注意的是,提出的时空融合方法形成了将遥感影像与物候变化或土地覆盖类型变化融合的统一框架。;基于提出的时空融合模型,我们建议对土地利用/土地覆盖进行监测中国深圳的变化。作为一个快速发展的城市,深圳面临着从合理的城市规划和可持续发展两个方面发现快速变化的问题。但是,由于深圳地区的阴天和阴雨天气,高质量卫星图像的捕获周期比正常的重访周期更长。时空融合方法能够通过提高具有较粗的空间分辨率但频繁的时间覆盖的图像的空间分辨率来解决此问题,从而使快速变化的检测成为可能。在分别具有年度和月度变化的两个Landsat-MODIS数据集上,我们将提出的时空融合方法应用于多重变化检测任务;随后,我们提出了一种针对卫星多光谱和高光谱(或基于字典对学习和稀疏非负矩阵分解的高光谱图像。通过组合来自高光谱图像的光谱信息(其特征是低空间分辨率但具有高光谱分辨率,简称为LSHS)和来自多光谱图像的空间信息(其特征在于具有高空间分辨率但具有低光谱分辨率且被缩写为HSLS),该方法旨在生成具有高空间分辨率和高光谱分辨率的融合数据。由于观察到每个高光谱像素可以由几个端成员的线性组合表示,因此该方法首先通过充分利用LSHS数据中的丰富光谱信息来提取LSHS和HSLS图像的光谱基础。然后,由于这两类数据的光谱库分别表示LSHS数据和HSLS数据的每个像素光谱,因此它们的对应关系形成了字典对。随后,通过相对于对应的学习字典表示HSLS图像来在空间上对LSHS图像进行混合,以导出其表示系数。结合LSHS数据的频谱基础和HSLS数据的表示系数,最终得出融合数据,其特征在于LSHS数据的频谱分辨率和HSLS数据的空间分辨率。

著录项

  • 作者

    Song, Huihui.;

  • 作者单位

    The Chinese University of Hong Kong (Hong Kong).;

  • 授予单位 The Chinese University of Hong Kong (Hong Kong).;
  • 学科 Geography.;Remote Sensing.;Engineering Environmental.;Computer Science.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 129 p.
  • 总页数 129
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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