Abstract

Spectral signatures of the pure constituent materials vary across the hyperspectral image (HSI) due to variable illumination, atmospheric conditions, and intrinsic variability. Using a single endmember to represent the target material (or endmember) with high spectral variability will lead to errors in estimating abundance. Therefore, we propose a probabilistic generative network (PGM-Net) architecture to learn the spectral variability from the HSI (hereinafter referred to as endmember-guided-probabilistic-model-network, EGPGM-Net). The PGM-Net is guided by endmember-network (E-Net) using the parameter sharing strategy. Experimental analysis was carried out on benchmark datasets to compare the performance of the proposed method with the state-of-the-art methods. Moreover, we have also demonstrated the application of EGPGM-Net for estimating the abundance of red and black soil over sparsely vegetated areas using airborne-visible-and -infrared -imaging-spectrometer-next-generation (AVIRISNG) sensor. The quantitative analysis reveals that the proposed method consistently achieves a better unmixing performance than other linear-mixing and deep learning based models in terms of spectral-angle-distance (SAD) and abunance-root-mean-square error (aRMSE). The proposed semi-supervised approach accurately delineated the abundances of red soil, black soil, crop residue, built-up areas and bituminous roads.

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