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Aerial imagery for roof segmentation: A large-scale dataset towards automatic mapping of buildings

机译:用于屋顶分割的航空影像:面向建筑物自动映射的大规模数据集

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摘要

As an important branch of deep learning, convolutional neural network has largely improved the performance of building detection. For further accelerating the development of building detection toward automatic mapping, a benchmark dataset bears significance in fair comparisons. However, several problems still remain in the current public datasets that address this task. First, although building detection is generally considered equivalent to extracting roof outlines, most datasets directly provide building footprints as ground truths for testing and evaluation; the challenges of these benchmarks are more complicated than roof segmentation, as relief displacement leads to varying degrees of misalignment between roof outlines and footprints. On the other hand, an image dataset should feature a large quantity and high spatial resolution to effectively train a high-performance deep learning model for accurate mapping of buildings. Unfortunately, the remote sensing community still lacks proper benchmark datasets that can simultaneously satisfy these requirements. In this paper, we present a new large-scale benchmark dataset termed Aerial Imagery for Roof Segmentation (AIRS). This dataset provides a wide coverage of aerial imagery with 7.5 cm resolution and contains over 220,000 buildings. The task posed for AIRS is defined as roof segmentation. We implement several state-of-the-art deep learning methods of semantic segmentation for performance evaluation and analysis of the proposed dataset. The results can serve as the baseline for future work.
机译:卷积神经网络作为深度学习的重要分支,在很大程度上改善了建筑物检测的性能。为了进一步加快建筑物检测向自动映射的发展,基准数据集在公平比较中具有重要意义。但是,在解决此任务的当前公共数据集中仍然存在一些问题。首先,尽管通常认为建筑物检测等同于提取屋顶轮廓,但是大多数数据集直接将建筑物足迹作为地面事实进行测试和评估。这些基准测试所面临的挑战比屋顶分割要复杂得多,因为浮雕位移会导致屋顶轮廓线和脚印之间不同程度的错位。另一方面,图像数据集应具有大量且高空间分辨率的特征,以有效地训练高性能深度学习模型,以精确地绘制建筑物。不幸的是,遥感界仍然缺乏可以同时满足这些要求的适当基准数据集。在本文中,我们提出了一个新的大规模基准数据集,称为“用于屋顶分割的航空影像(AIRS)”。该数据集以7.5 cm的分辨率广泛覆盖了航空影像,并包含超过220,000座建筑物。 AIRS的任务定义为屋顶分割。我们实施了几种最先进的语义分割深度学习方法,用于对所提出的数据集进行性能评估和分析。结果可以用作将来工作的基准。

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