A Hybrid Information Reconstruction Algorithm for Multitemporal Landsat Image

碩士 === 國立成功大學 === 測量及空間資訊學系 === 103 === The key to information reconstruction of cloud-contaminated satellite images is to recover missing data by utilizing temporal and contextual information while maintaining radiometric accuracy and consistency. Most previous studies achieved this objective by us...

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Main Authors: Zhi-BinChen, 陳誌彬
Other Authors: Chao-Hung Lin
Format: Others
Language:en_US
Published: 2015
Online Access:http://ndltd.ncl.edu.tw/handle/99694062816569229527
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spelling ndltd-TW-103NCKU53670022016-08-22T04:17:52Z http://ndltd.ncl.edu.tw/handle/99694062816569229527 A Hybrid Information Reconstruction Algorithm for Multitemporal Landsat Image 混合式資訊重建演算法應用於多時期Landsat衛星影像修復 Zhi-BinChen 陳誌彬 碩士 國立成功大學 測量及空間資訊學系 103 The key to information reconstruction of cloud-contaminated satellite images is to recover missing data by utilizing temporal and contextual information while maintaining radiometric accuracy and consistency. Most previous studies achieved this objective by using patch-based information cloning or pixel-based contextual prediction. Patch-based methods that utilize temporal correlation of multitemporal images have the advantage of radiometric consistency, whereas pixel-based methods that use spatial contextual information can achieve radiometric accuracy. A hybrid method that integrates patch-based cloning with pixel-based prediction is proposed to provide a radiometric accurate and consistent reconstruction. In the proposed method, a small set of cloud-contaminated pixels with high-confidence filling results is determined on the basis of the fact that same-class pixels have similar spectral characteristics and exhibit similar temporal changes between dates. These pixels, which are called fixed points, are used to optimize patch-based radiometric cloning. Radiometric patch cloning is mathematically formulated as a Poisson equation and solved by using an optimization process. Several cloud-free and high-similarity patches are optimally cloned to a corresponding cloud-contaminated region under constraints from fixed pixels. Cloning optimization can lead to radiometric consistent results. Fixed-point constraints can improve radiometric accuracy by reducing error propagation in radiometric cloning. In experiments, simulated images and actual image sequences acquired by Landsat Enhanced Thematic Mapper Plus sensor are used to assess the performance of the proposed hybrid method. Experimental results indicate that our method can accurately recover the value of cloud-contaminated pixels, and the reconstruction accuracy is improved in comparison with related methods. Chao-Hung Lin 林昭宏 2015 學位論文 ; thesis 74 en_US
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language en_US
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description 碩士 === 國立成功大學 === 測量及空間資訊學系 === 103 === The key to information reconstruction of cloud-contaminated satellite images is to recover missing data by utilizing temporal and contextual information while maintaining radiometric accuracy and consistency. Most previous studies achieved this objective by using patch-based information cloning or pixel-based contextual prediction. Patch-based methods that utilize temporal correlation of multitemporal images have the advantage of radiometric consistency, whereas pixel-based methods that use spatial contextual information can achieve radiometric accuracy. A hybrid method that integrates patch-based cloning with pixel-based prediction is proposed to provide a radiometric accurate and consistent reconstruction. In the proposed method, a small set of cloud-contaminated pixels with high-confidence filling results is determined on the basis of the fact that same-class pixels have similar spectral characteristics and exhibit similar temporal changes between dates. These pixels, which are called fixed points, are used to optimize patch-based radiometric cloning. Radiometric patch cloning is mathematically formulated as a Poisson equation and solved by using an optimization process. Several cloud-free and high-similarity patches are optimally cloned to a corresponding cloud-contaminated region under constraints from fixed pixels. Cloning optimization can lead to radiometric consistent results. Fixed-point constraints can improve radiometric accuracy by reducing error propagation in radiometric cloning. In experiments, simulated images and actual image sequences acquired by Landsat Enhanced Thematic Mapper Plus sensor are used to assess the performance of the proposed hybrid method. Experimental results indicate that our method can accurately recover the value of cloud-contaminated pixels, and the reconstruction accuracy is improved in comparison with related methods.
author2 Chao-Hung Lin
author_facet Chao-Hung Lin
Zhi-BinChen
陳誌彬
author Zhi-BinChen
陳誌彬
spellingShingle Zhi-BinChen
陳誌彬
A Hybrid Information Reconstruction Algorithm for Multitemporal Landsat Image
author_sort Zhi-BinChen
title A Hybrid Information Reconstruction Algorithm for Multitemporal Landsat Image
title_short A Hybrid Information Reconstruction Algorithm for Multitemporal Landsat Image
title_full A Hybrid Information Reconstruction Algorithm for Multitemporal Landsat Image
title_fullStr A Hybrid Information Reconstruction Algorithm for Multitemporal Landsat Image
title_full_unstemmed A Hybrid Information Reconstruction Algorithm for Multitemporal Landsat Image
title_sort hybrid information reconstruction algorithm for multitemporal landsat image
publishDate 2015
url http://ndltd.ncl.edu.tw/handle/99694062816569229527
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