Accurate maps of irrigation are essential for understanding and managing water resources. We present a new method of mapping irrigation and demonstrate its accuracy for the state of Montana from years 2000-2019. The method is based off of an ensemble of convolutional neural networks that use reflectance information from Landsat imagery to classify irrigated pixels, that we call IrrMapper-U-Net. The methodology does not rely on extensive feature engineering and does not condition the classification with land use information from existing geospatial datasets. The ensemble does not need exhaustive hyperparameter tuning and the analysis pipeline is lightweight enough to be implemented on a personal computer. Furthermore, the proposed methodology provides an estimate of the uncertainty associated with classification. We evaluated our methodology and the resulting irrigation maps using a highly accurate novel spatially-explicit ground truth data set, using county-scale USDA surveys of irrigation extent, and using cadastral surveys. We found that that our method outperforms other methods of mapping irrigation in Montana in terms of overall accuracy and precision. We found that our method agrees better statewide with the USDA National Agricultural Statistics Survey estimates of irrigated area compared to other methods, and has far fewer errors of commission in rainfed agriculture areas. The method learns to mask clouds and ignore Landsat 7 scan-line failures without supervision, reducing the need for preprocessing data. This methodology has the potential to be applied across the entire United States and for the complete Landsat record.
翻译:精确的灌溉地图对于理解和管理水资源至关重要。我们提出了一种新的灌溉绘图方法,并展示了2000至2019年蒙大拿州状况的精确度。该方法基于一系列的进化神经网络,这些网络利用大地卫星图像中的反映信息对灌溉像素进行分类,我们称之为IrrMapper-U-Net。该方法不依赖广泛的地貌工程,也不以现有地理空间数据集中的土地利用信息为分类条件。该组合不需要详尽的超分计调,分析管道也足够轻,足以在个人计算机上实施。此外,拟议方法提供了与分类有关的不确定性的估计。我们用非常准确的、空间清晰的地面真象数据集评估了我们的方法和由此绘制的灌溉图。我们用的是州一级美国农业部对灌溉规模的调查,并使用地籍调查。我们发现,我们的方法在总体准确性和精确性方面优于7种完整的灌溉测绘方法。我们发现,我们采用的方法与美国农业部农业数据调查局对农业数据系统进行更精确的系统化方法相比,在农业领域中采用的方法比其他方法要少得多。