论文标题
彩网:空间降水缩放的大型图像数据集和基准
RainNet: A Large-Scale Imagery Dataset and Benchmark for Spatial Precipitation Downscaling
论文作者
论文摘要
AI科学方法已应用于解决科学问题(例如核融合,生态学,基因组学,气象学),并取得了高度希望的结果。空间降水降级是最重要的气象问题之一,紧急需要AI的参与。但是,缺乏组织良好的大规模数据集妨碍了对降水降低降水的更有效和深入学习模型的培训和验证。为了减轻这些障碍,我们介绍了名为Rainet的第一个大规模的空间降水缩减数据集,其中包含超过62,400美元的高质量低/高分辨率降水图,以超过17美元的价格成对,准备帮助降水模型的深度学习模型的演变。具体而言,在彩绘网中仔细收集的降水图覆盖了各种气象现象(例如飓风,que弱),这有助于提高模型的概括能力。此外,彩网中的地图对以图像序列的形式(每月$ 720 $地图或1个地图/小时)组成,显示复杂的物理特性,例如时间不对对准,时间稀疏和流体特性。此外,专门引入了两个面向学习的指标,以评估或验证受过训练的模型的全面性能(例如,预测映射地图重建精度)。为了说明彩网的应用,评估了14种最先进的模型,包括深模型和传统方法。为了充分探索潜在的缩减解决方案,我们提出了一个隐性的物理估计基准框架来学习上述特征。广泛的实验证明了彩网在训练和评估缩减模型中的价值。我们的数据集可在https://neuralchen.github.io/rainnet/上找到。
AI-for-science approaches have been applied to solve scientific problems (e.g., nuclear fusion, ecology, genomics, meteorology) and have achieved highly promising results. Spatial precipitation downscaling is one of the most important meteorological problem and urgently requires the participation of AI. However, the lack of a well-organized and annotated large-scale dataset hinders the training and verification of more effective and advancing deep-learning models for precipitation downscaling. To alleviate these obstacles, we present the first large-scale spatial precipitation downscaling dataset named RainNet, which contains more than $62,400$ pairs of high-quality low/high-resolution precipitation maps for over $17$ years, ready to help the evolution of deep learning models in precipitation downscaling. Specifically, the precipitation maps carefully collected in RainNet cover various meteorological phenomena (e.g., hurricane, squall), which is of great help to improve the model generalization ability. In addition, the map pairs in RainNet are organized in the form of image sequences ($720$ maps per month or 1 map/hour), showing complex physical properties, e.g., temporal misalignment, temporal sparse, and fluid properties. Furthermore, two deep-learning-oriented metrics are specifically introduced to evaluate or verify the comprehensive performance of the trained model (e.g., prediction maps reconstruction accuracy). To illustrate the applications of RainNet, 14 state-of-the-art models, including deep models and traditional approaches, are evaluated. To fully explore potential downscaling solutions, we propose an implicit physical estimation benchmark framework to learn the above characteristics. Extensive experiments demonstrate the value of RainNet in training and evaluating downscaling models. Our dataset is available at https://neuralchen.github.io/RainNet/.