Dimensionality Reduction Techniques For Hyperspectral Image using Deep Learning

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Abstract

This Research proposal addresses the issues of dimension reduction algorithms in Deep Learning(DL) for Hyperspectral Imaging (HSI) classification, to reduce the size of training dataset and for feature extraction ICA(Independent Component Analysis) are adopted. The proposed algorithm evaluated uses real HSI data set. It shows that ICA gives the most optimistic presentation it shrinks off the feature occupying a small portion of all pixels distinguished from the noisy bands based on non Gaussian assumption of independent sources. In turn, finding the independent components to address the challenge. A new approach DL based method is adopted, that has greater attention in the research field of HSI. DL based method is evaluated by a sequence prediction architecture that includes a recurrent neural network the LSTM architecture. It includes CNN layers for feature extraction of input datasets that have better accuracy with minimum computational cost

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Dimensionality Reduction Techniques For Hyperspectral Image using Deep Learning. (2019). International Journal of Innovative Technology and Exploring Engineering, 9(2S3), 364–370. https://doi.org/10.35940/ijitee.b1033.1292s319

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