Monitoring Changes In Agricultural Field Boundaries Using Spatiotemporal Remote Sensing Data
- 1Google, Research, Bangalore, India (nikitasaxena@google.com)
- 2Google, Ghana
- 3Google, UK
In the domain of precision agriculture, land-use planning, and resource management, the precise delineation of field boundaries is pivotal for informed decision-making. The dynamic nature of agricultural landscapes, particularly in smallholder farming, introduces seasonal changes that pose challenges to accurately identify and update field boundaries. The conventional approach of relying on high-resolution imagery for this purpose proves to be economically impractical on a seasonal basis. We propose a framework that utilizes a spatiotemporal series of medium-resolution public imagery (e.g., Sentinel-2) in conjunction with an outdated high-resolution image as a reference for super-resolution reconstruction. The developed methodology incorporates super-resolution techniques to enhance the spatial resolution while simultaneously performing semantic segmentation at the higher resolution. We evaluate the proposed model's performance in predicting seasonal field boundaries at a pan-India level. The validity of these findings is established through assessment by a team of human annotators.
Our approach aims to offer a scalable spatiotemporal solution for accurate field boundary identification at a national level by combining information from different satellites at different resolutions.
How to cite: Saxena, N., Annkah, A., Deshpande, I., Wilson, A., and Talekar, A.: Monitoring Changes In Agricultural Field Boundaries Using Spatiotemporal Remote Sensing Data, EGU General Assembly 2024, Vienna, Austria, 14–19 Apr 2024, EGU24-15697, https://doi.org/10.5194/egusphere-egu24-15697, 2024.