Distributed Hyperspectral Image Analysis based on Cloud Computing Architectures
Abstract
In this thesis, we introduce a novel distributed version of the N-FINDR endmember extraction
algorithm, which is able to exploit computer cluster resources in order to efficiently process
large volumes of hyperspectral remote sensing data. The implementation of the distributed algorithm
was done by extending the InterCloud Data Mining Package capabilities, originally
adopted for land cover classification, through the HyperCloud-RS framework, here adapted for
performing endmember extraction processes, which can be likewise executed on cloud computing
environments, allowing users to elastically access and exploit processing power and storage
space within cloud computing architectures, for adequately processing large volumes of hyperspectral
data. The framework supports distributed execution, network communication, and
fault tolerance, transparently and efficiently to the user. The experimental analysis addresses
the performance issues, assessing both accuracy and execution time, over the processing of different
synthetic versions of the AVIRIS Cuprite hyperspectral dataset, with 3.1 Gb, 6.2 Gb, and
15.1Gb respectively, thus addressing the issue of dealing with large-scale hyperspectral data.
As a further contribution of this work, we describe in detail how to extend the HyperCloud-RS
framework by integrating new endmember extraction algorithms within the proposed architecture,
thus enabling researchers to implement their own distributed endmember extraction
approaches specifically designed for processing large volumes of hyperspectral data.
Temas
Computación en la nube
Percepción remota
Imágenes hiperespectrales
Procesamiento de imágenes--Algoritmos
Percepción remota
Imágenes hiperespectrales
Procesamiento de imágenes--Algoritmos
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Doctor en Ingeniería
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