Abstract

Generative adversarial networks (GANs) are a type of neural network that are characterized by their unique construction and training process. Utilizing the concept of the latent space and exploiting the results of a duel between different GAN components opens up interesting opportunities for computer vision (CV) activities, such as image inpainting, style transfer, or even generative art. GANs have great potential to support aerial and satellite image interpretation activities. Carefully crafting a GAN and applying it to a high-quality dataset can result in nontrivial feature enrichment. In this study, we have designed and tested an unsupervised procedure capable of engineering new features by shifting real orthophotos into the GAN’s underlying latent space. Latent vectors are a low-dimensional representation of the orthophoto patches that hold information about the strength, occurrence, and interaction between spatial features discovered during the network training. Latent vectors were combined with geographical coordinates to bind them to their original location in the orthophoto. In consequence, it was possible to describe the whole research area as a set of latent vectors and perform further spatial analysis not on RGB images but on their lower-dimensional representation. To accomplish this goal, a modified version of the big bidirectional generative adversarial network (BigBiGAN) has been trained on a fine-tailored orthophoto imagery dataset covering the area of the Pilica River region in Poland. Trained models, precisely the generator and encoder, have been utilized during the processes of model quality assurance and feature engineering, respectively. Quality assurance was performed by measuring model reconstruction capabilities and by manually verifying artificial images produced by the generator. The feature engineering use case, on the other hand, has been presented in a real research scenario that involved splitting the orthophoto into a set of patches, encoding the patch set into the GAN latent space, grouping similar patches latent codes by utilizing hierarchical clustering, and producing a segmentation map of the orthophoto.

Highlights

  • IntroductionThe rapid development of remote sensing technology supported by a significant improvement in access to remote sensing imagery [1] led to an increased interest in the potential use of the collected material among academia, government, and private sector representatives in areas such as urban planning, agriculture, transport, etc

  • The principal goal of our study is to evaluate the potential of bidirectional generative adversarial networks in remote sensing feature engineering activities and unsupervised segmentation

  • bidirectional generative neural network (BiGAN) offered all of the required earlier determine whether the image is artificially generated patch or not, directly features, it was not capable of processing an orthophoto of respectively

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Summary

Introduction

The rapid development of remote sensing technology supported by a significant improvement in access to remote sensing imagery [1] led to an increased interest in the potential use of the collected material among academia, government, and private sector representatives in areas such as urban planning, agriculture, transport, etc. Substantial quantities of image data have become available in recent years thanks to opening public access to images acquired by satellites such as Landsat 8 [2], Sentinel-2. Due to the epidemiological situation in Poland, the government decided to open access to national orthophoto resources [5]. Access to highquality and properly curated image repositories undoubtedly promotes the development of new ideas and contributes to the emergence of various methods and techniques for analyzing collected data

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