dc.description.abstract |
Remote sensing of the Earth using satellites helps analyze the Earth’s resources,
monitor local land surface changes, and study global climate changes. In particular,
farmland information helps farmers in decision-making, planning and increases
productivity to achieve better agro-ecological conditions. In this work, we primarily
focus on panoptic segmentation of agricultural land, a combination of two parts:
1) delineation of parcels (instance segmentation) and 2) classification of parcel crop
type (semantic segmentation). Second, we explore how multi-temporal satellite imagery
data compares to a single image query in segmentation performance. Third,
we conduct experiments using the recent advances in Deep Learning and Computer
Vision that improve the performance of such systems. Finally, we show the performance
of the state-of-the-art panoptic segmentation algorithm on the agricultural
land of Ukraine, where the farmland market has just opened. |
uk |