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    Robust Noise Filtering techniques for improving the Quality of SODISM images using Imaging and Machine Learning

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    MPhil Thesis (2.073Mb)
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    Publication date
    2020
    Author
    Algamudi, Abdulrazag A.M.
    Supervisor
    Not named
    Keyword
    Solar features
    Solar Diameter Imager and Surface Mapper (SODISM)
    PICARD Satellite
    Noise identification
    Machine learning
    Support vector machines
    Solar image enhancement
    Wiener filter
    Modified-Un-decimated Discrete Wavelet Transforms (M-UDWT)
    Rights
    Creative Commons License
    The University of Bradford theses are licenced under a Creative Commons Licence.
    Institution
    University of Bradford
    Department
    School of Electrical Engineering and computer Science. Faculty of Engineering and Informatics
    Awarded
    2020
    
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    Abstract
    Life on Earth is strongly related to the Sun, which makes it a vital star to study and understand. To improve our knowledge of the way the Sun works, many satellites have been launched into space to monitor the Sun‟s activities where the one of main focus is the effect of these activities on the Earth‟s climate; PICARD is one such satellite. Due to the noise associated with SODISM images, the clarity of these images and the appearance of solar features are affected. Image denoising and enhancement are the main techniques to improve the visual appearance of SODISM images. Affective de-noising algorithm methods depend on a proper detecting of noise present in the image. The aim is to identify which type of noise is present in the image. To reach this point, supervised machine-learning (ML) classifier is used to classify the type of noise present in the image. Furthermore, this work introduces a novel technique developed to enhance the quality of SODISM images. In this thesis, the Modified Undecimated Discrete Wavelet Transform (M-UDWT) technique is used to de-noise and enhance the quality of SODISM images. The proposed method is robust and effectively improves the quality of SODISM images, and produces more precise information and clear feature are brought out. In addition, the non wavelet enhancement is developed as well in this thesis. The results of this algorithm is discussed. The new methods are also assessed using two different methods: subjective (by human observation) and objective (by calculation)
    URI
    http://hdl.handle.net/10454/19216
    Type
    Thesis
    Qualification name
    MPhil
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    Theses

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