Maintaining farm sustainability through optimizing the agricultural management practices helps build more planet-friendly environment. The emerging satellite missions can acquire multi- and hyperspectral imagery which captures more detailed spectral information concerning the scanned area, hence allows us to benefit from subtle spectral features during the analysis process in agricultural applications. We introduce an approach for extracting 2.5 m cultivated land maps from 10 m Sentinel-2 multispectral image series which benefits from a compact graph convolutional neural network. The experiments indicate that our models not only outperform classical and deep machine learning techniques through delivering higher-quality segmentation maps, but also dramatically reduce the memory footprint when compared to U-Nets (almost 8k trainable parameters of our models, with up to 31M parameters of U-Nets). Such memory frugality is pivotal in the missions which allow us to uplink a model to the AI-powered satellite once it is in orbit, as sending large nets is impossible due to the time constraints.
翻译:通过优化农业管理做法保持农业可持续性有助于建立更有利于地球的环境。新兴的卫星飞行任务可以获取多光谱和超高光谱图像,获取与扫描区有关的更详细的光谱信息,从而使我们能够在农业应用分析过程中受益于微妙的光谱特征。我们引入了从10米哨兵-2多光谱图像系列中提取2.5米耕地图的方法,这得益于一个紧凑的图形革命性神经网络。实验表明,我们的模型不仅通过提供质量更高的分区图而优于经典和深层机器学习技术,而且与U-Net(我们模型的近8千个可训练参数,最高可达U-Net的31M参数)相比,还大大降低了记忆足迹。这种记忆节奏对于飞行任务至关重要,因为由于时间的限制,无法发送大网,因此使得我们在轨道上能够将模型与AI动力卫星连接起来。