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Wavelet-based feature extraction from oceanographic images

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5 Author(s)
K. K. Simhadri ; Dept. of Comput. Sci., Louisiana State Univ., Baton Rouge, LA, USA ; S. S. Iyengar ; R. J. Holyer ; M. Lybanon
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Features in satellite images of the oceans often have weak edges. These images also have a significant amount of noise, which is either due to the clouds or atmospheric humidity. The presence of noise compounds the problems associated with the detection of features, as the use of any traditional noise removal technique will also result in the removal of weak edges. Recently, there have been rapid advances in image processing as a result of the development of the mathematical theory of wavelet transforms. This theory led to multifrequency channel decomposition of images, which further led to the evolution of important algorithms for the reconstruction of images at various resolutions from the decompositions. The possibility of analyzing images at various resolutions can be useful not only in the suppression of noise, but also in the detection of fine features and their classification. This paper presents a new computational scheme based on multiresolution decomposition for extracting the features of interest from the oceanographic images by suppressing the noise. The multiresolution analysis from the median presented by Starck-Murtagh-Bijaoui (1994) is used for the noise suppression

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IEEE Transactions on Geoscience and Remote Sensing  (Volume:36 ,  Issue: 3 )