1. Introduction
Remote sensing is becoming increasingly important to many applications, including land use monitoring [12], precision agriculture [29], disaster prevention [37], wildfire detection [11], vector-borne disease surveillance [20], and tackling climate change [33]. Combined with recent advances in deep learning and computer vision, there is enormous potential for monitoring global issues through the automated analysis of remote sensing and other geospatial data streams.