Climate change has caused reductions in river runoffs and aquifer recharge resulting in an increasingly unsustainable crop water demand from reduced freshwater availability. Achieving food security while deploying water in a sustainable manner will continue to be a major challenge necessitating careful monitoring and tracking of agricultural water usage. Historically, monitoring water usage has been a slow and expensive manual process with many imperfections and abuses. Ma-chine learning and remote sensing developments have increased the ability to automatically monitor irrigation patterns, but existing techniques often require curated and labelled irrigation data, which are expensive and time consuming to obtain and may not exist for impactful areas such as developing countries. In this paper, we explore an end-to-end real world application of irrigation detection with uncurated and unlabeled satellite imagery. We apply state-of-the-art self-supervised deep learning techniques to optical remote sensing data, and find that we are able to detect irrigation with up to nine times better precision, 90% better recall and 40% more generalization ability than the traditional supervised learning methods.
翻译:气候变化导致河流径流和蓄水层补给减少,导致淡水供应量减少,对作物用水的需求越来越不可持续。在以可持续方式部署水的同时实现粮食安全将继续是一项重大挑战,需要认真监测和跟踪农业用水情况。历史上,监测用水使用是一个缓慢而昂贵的人工过程,有许多不完善和滥用。 中风学习和遥感发展提高了自动监测灌溉模式的能力,但现有技术往往需要经整理和贴标签的灌溉数据,这些数据需要花费昂贵和时间才能获得,而且对发展中国家等受灾地区可能不存在。 在本文中,我们探索如何用未经证实和未贴标签的卫星图象进行灌溉探测的终至终世界应用。我们运用最先进的深层学习技术来光学遥感数据,发现我们能够以高达9倍的精确度、90%的更好回顾和40%的普及能力探测灌溉,而不是传统的受监督的学习方法。