A Proxy Consistency Loss for Grounded Fusion of Earth Observation and Location Encoders
arXiv:2604.18881v1 Announce Type: cross
Abstract: Supervised learning with Earth observation inputs is often limited by the sparsity of high-quality labeled or in-situ measured data to use as training labels. With the abundance of geographic data prod…