巴西坝:尾矿坝检测的基准数据集

E. Ferreira, M. Brito, R. Balaniuk, M. Alvim, J. A. D. Santos
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引用次数: 6

摘要

在这项工作中,我们提出了BrazilDAM,这是一个基于Sentinel-2和Landsat-8卫星图像的新型公共数据集,涵盖了巴西国家矿业局(ANM)编目的所有尾矿坝。该数据集是根据2016年至2019年期间记录的769座水坝的地理参考图像建立的。为了生成无云图像,对时间序列进行了处理。这些水坝包含来自不同矿石类别的采矿废物,并且具有高度不同的形状、面积和体积,这使得BrazilDAM在机器学习基准测试中特别有趣和具有挑战性。除了大坝坐标外,原始目录还包括:主要矿石、建造方法、风险类别和相关的潜在损害。为了评估BrazilDAM的预测潜力,我们使用最先进的深度卷积神经网络(cnn)进行分类论文。实验中,尾矿库二元分类任务的平均分类准确率达到了94.11%。此外,利用原始目录中的补充信息进行了另外四次实验设置,充分利用了所提出数据集的容量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Brazildam: A Benchmark Dataset For Tailings Dam Detection
In this work we present BrazilDAM, a novel public dataset based on Sentinel-2 and Landsat-8 satellite images covering all tailings dams cataloged by the Brazilian National Mining Agency (ANM). The dataset was built using georeferenced images from 769 dams, recorded between 2016 and 2019. The time series were processed in order to produce cloud free images. The dams contain mining waste from different ore categories and have highly varying shapes, areas and volumes, making BrazilDAM particularly interesting and challenging to be used in machine learning benchmarks. The original catalog contains, besides the dam coordinates, information about: the main ore, constructive method, risk category, and associated potential damage. To evaluate BrazilDAM’s predictive potential we performed classification essays using state-of-the-art deep Convolutional Neural Network (CNNs). In the experiments, we achieved an average classification accuracy of 94.11% in tailing dam binary classification task. In addition, others four setups of experiments were made using the complementary information from the original catalog, exhaustively exploiting the capacity of the proposed dataset.
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