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Void Filling of Digital Elevation Models With Deep Generative Models

机译:用深度生成模型填充数字高程模型的空隙

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摘要

In recent years, advances in machine learning algorithms, cheap computational resources, and the availability of big data have spurred the deep learning revolution in various application domains. In particular, supervised learning techniques in image analysis have led to a superhuman performance in various tasks, such as classification, localization, and segmentation, whereas unsupervised learning techniques based on increasingly advanced generative models have been applied to generate high-resolution synthetic images indistinguishable from real images. In this letter, we consider a state-of-the-art machine learning model for image inpainting, namely, a Wasserstein Generative Adversarial Network based on a fully convolutional architecture with a contextual attention mechanism. We show that this model can be successfully transferred to the setting of digital elevation models for the purpose of generating semantically plausible data for filling voids. Training, testing, and experimentation are done on GeoTIFF data from various regions in Norway, made openly available by the Norwegian Mapping Authority.
机译:近年来,机器学习算法的进步,廉价的计算资源以及大数据的可用性刺激了各种应用领域的深度学习革命。尤其是,图像分析中的监督学习技术已导致超人在各种任务(例如分类,定位和分割)中的表现,而基于日益先进的生成模型的无监督学习技术已被应用于生成与图像难以区分的高分辨率合成图像。真实的图像。在这封信中,我们考虑了用于图像修复的最先进的机器学习模型,即基于完全卷积架构和上下文关注机制的Wasserstein生成对抗网络。我们表明,该模型可以成功地转移到数字高程模型的设置中,以生成语义上合理的数据来填补空白。挪威测绘局公开提供了来自挪威各个地区的GeoTIFF数据的培训,测试和实验。

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