论文标题
使用增长阶段归一化的多光谱卫星观测中的季节内作物类型分类
Resilient In-Season Crop Type Classification in Multispectral Satellite Observations using Growth Stage Normalization
论文作者
论文摘要
使用卫星观测的作物类型分类是提供有关种植区域的见解并实现作物状况和产量的估计的重要工具,尤其是在这些数量不确定性最高的生长季节内。随着气候变化和极端天气事件变得越来越频繁,这些方法必须对可能发生的域移动变化(例如由于种植时间表的变化而发生)弹性。在这项工作中,我们提出了一种使用适度的空间分辨率(30 m)卫星数据进行季节性农作物类型分类的方法,该数据通过通过作物生长阶段标准化输入来解决与种植时间表有关的域移位。我们使用利用卷积和经常性层的神经网络来预测像素是否含有玉米,大豆或其他农作物或土地覆盖类型。我们评估了美国中西部2019年生长季节的这种方法,在此期间,由于极端天气导致创纪录的洪水,种植延迟了1-2个月。我们表明,我们使用增长阶段差异时间序列的方法优于固定日期序列,并且在收获之前(9月至11月)之前的总体分类准确度为85.4%,到季节中期(7月至9月)达到了82.8%。
Crop type classification using satellite observations is an important tool for providing insights about planted area and enabling estimates of crop condition and yield, especially within the growing season when uncertainties around these quantities are highest. As the climate changes and extreme weather events become more frequent, these methods must be resilient to changes in domain shifts that may occur, for example, due to shifts in planting timelines. In this work, we present an approach for within-season crop type classification using moderate spatial resolution (30 m) satellite data that addresses domain shift related to planting timelines by normalizing inputs by crop growth stage. We use a neural network leveraging both convolutional and recurrent layers to predict if a pixel contains corn, soybeans, or another crop or land cover type. We evaluated this method for the 2019 growing season in the midwestern US, during which planting was delayed by as much as 1-2 months due to extreme weather that caused record flooding. We show that our approach using growth stage-normalized time series outperforms fixed-date time series, and achieves overall classification accuracy of 85.4% prior to harvest (September-November) and 82.8% by mid-season (July-September).