Parameter-Efficient Adaptation of Geospatial Foundation Models through Embedding Deflection
Journal:
arXiv
Published Date:
Mar 12, 2025
Abstract
As large-scale heterogeneous data sets become increasingly available,
adapting foundation models at low cost has become a key issue. Seminal works in
natural language processing, e.g. Low-Rank Adaptation (LoRA), leverage the low
"intrinsic rank" of parameter updates during adaptation. In this paper, we
argue that incorporating stronger inductive biases in both data and models can
enhance the adaptation of Geospatial Foundation Models (GFMs), pretrained on
RGB satellite images, to other types of optical satellite data. Specifically,
the pretrained parameters of GFMs serve as a strong prior for the spatial
structure of multispectral images. For this reason, we introduce DEFLECT
(Deflecting Embeddings for Finetuning Latent representations for Earth and
Climate Tasks), a novel strategy for adapting GFMs to multispectral satellite
imagery with very few additional parameters. DEFLECT improves the
representation capabilities of the extracted features, particularly enhancing
spectral information, which is essential for geoscience and
environmental-related tasks. We demonstrate the effectiveness of our method
across three different GFMs and five diverse datasets, ranging from forest
monitoring to marine environment segmentation. Compared to competing methods,
DEFLECT achieves on-par or higher accuracy with 5-10$\times$ fewer parameters
for classification and segmentation tasks. The code will be made publicly
available.