The paper addresses the further advance in our complex research in the field of multisensory image fusion based on generative adversarial models [1-2] and their application to such practical tasks as visual representation of fused images, acquired in different spectral ranges (e.g. TV and IR), and changes detection on images, acquired in different conditions (e.g. season-varying images). A developed architecture of a neural network based on pix2pix model is presented, which can solve the both tasks mentioned above. A technique for generating training and test datasets including data augmentation process is described. The results are demonstrated on real-world images.
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