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The Synthinel-1 dataset: a collection of high resolution synthetic overhead imagery for building segmentation

机译:Synthinel-1数据集:用于建筑物分割的高分辨率合成高架图像的集合

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Recently deep learning – namely convolutional neural networks (CNNs) – have yielded impressive performance for the task of building segmentation on large overhead (e.g., satellite) imagery benchmarks. However, these benchmark datasets only capture a small fraction of the variability present in real-world overhead imagery, limiting the ability to properly train, or evaluate, models for real-world application. Unfortunately, developing a dataset that captures even a small fraction of real-world variability is typically infeasible due to the cost of imagery, and manual pixel-wise labeling of the imagery. In this work we develop an approach to rapidly and cheaply generate large and diverse synthetic overhead imagery for training segmentation CNNs. Using this approach, we generate and publicly-release a collection of synthetic overhead imagery, termed Synthinel-1, with full pixel-wise building labels. We use several benchmark datasets to demonstrate that Synthinel-1 is consistently beneficial when used to augment real-world training imagery, especially when CNNs are tested on novel geographic locations or conditions.
机译:最近的深度学习(即卷积神经网络(CNN))在基于大开销(例如卫星)图像基准进行建筑物分割的任务方面取得了令人印象深刻的性能。但是,这些基准数据集仅捕获了实际开销图像中存在的一小部分可变性,从而限制了为实际应用正确训练或评估模型的能力。不幸的是,由于图像的成本以及图像的手动像素标记,开发即使捕获很小一部分真实世界变异性的数据集通常也是不可行的。在这项工作中,我们开发了一种方法,可以快速廉价地生成大型多样的合成开销图像,用于训练CNN分割。使用这种方法,我们生成并公开发布了合成合成图像的集合,称为Synthinel-1,带有完整的像素级建筑标签。我们使用几个基准数据集来证明Synthinel-1在用于增强现实世界的训练图像时,尤其是在新的地理位置或条件下对CNN进行测试时,始终如一地受益。

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