Poster
in
Workshop: 3rd ICLR Workshop on Machine Learning for Remote Sensing
PyViT-FUSE: A Foundation Model for Multi-Sensor Earth Observation Data
Manuel Weber · Carly Beneke
Abstract:
We propose PyViT-FUSE, a foundation model for earth observation data explicitly designed to handle multi-modal imagery by learning to fuse an arbitrary number of mixed-resolution input bands into a single representation through an attention mechanism. The learned patch tokens are further processed by a stack of vision transformers with a novel pyramidal structure. We train the model on a globally sampled dataset in a self-supervised manner, leveraging core concepts of the SwAV algorithm. We show the interpretability of the fusion mechanism by visualization of the attention scores and the models applicability to downstream tasks.
Chat is not available.
Successful Page Load