Monitoring vegetation productivity at extremely fine resolutions is valuable for real-world agricultural applications, such as detecting crop stress and providing early warning of food insecurity. Solar-Induced Chlorophyll Fluorescence (SIF) provides a promising way to directly measure plant productivity from space. However, satellite SIF observations are only available at a coarse spatial resolution, making it impossible to monitor how individual crop types or farms are doing. This poses a challenging coarsely-supervised regression (or downscaling) task; at training time, we only have SIF labels at a coarse resolution (3km), but we want to predict SIF at much finer spatial resolutions (e.g. 30m, a 100x increase). We also have additional fine-resolution input features, but the relationship between these features and SIF is unknown. To address this, we propose Coarsely-Supervised Smooth U-Net (CS-SUNet), a novel method for this coarse supervision setting. CS-SUNet combines the expressive power of deep convolutional networks with novel regularization methods based on prior knowledge (such as a smoothness loss) that are crucial for preventing overfitting. Experiments show that CS-SUNet resolves fine-grained variations in SIF more accurately than existing methods.
翻译:光生氯氟化碳(SIF)为直接从空间测量植物生产力提供了一种有希望的方法。然而,卫星SIF的观测只能以粗略的空间分辨率提供,因此无法监测个别作物类型或农场是如何工作的。这构成了一种具有挑战性的粗糙监督回归(或降尺度)任务;在培训时间,我们只有粗糙分辨率(3千米)的SIF标签,但我们希望预测SIF的清晰空间分辨率要高得多(例如30米,增加100x)。我们还拥有额外的精细分辨率输入特征,但这些特征与SIF之间的关系尚不得而知。为了解决这个问题,我们提议使用粗糙的超超光滑的U-Net(CS-SUNet),这是用于这种粗糙监督设置的一种新颖的方法。CS-SUNet将深深层革命网络的明显力量与基于先前知识的新式的正规化方法(例如一种更平稳的SIF-SU)相结合的方法结合起来,而这种方法比C-SUFS的精准性实验性更能地显示SU的精确的分辨率变化。