Multi-Spectral Remote Sensing Image Retrieval Using Geospatial Foundation Models
CoRR(2024)
摘要
Image retrieval enables an efficient search through vast amounts of satellite
imagery and returns similar images to a query. Deep learning models can
identify images across various semantic concepts without the need for
annotations. This work proposes to use Geospatial Foundation Models, like
Prithvi, for remote sensing image retrieval with multiple benefits: i) the
models encode multi-spectral satellite data and ii) generalize without further
fine-tuning. We introduce two datasets to the retrieval task and observe a
strong performance: Prithvi processes six bands and achieves a mean Average
Precision of 97.62% on BigEarthNet-43 and 44.51% on ForestNet-12,
outperforming other RGB-based models. Further, we evaluate three compression
methods with binarized embeddings balancing retrieval speed and accuracy. They
match the retrieval speed of much shorter hash codes while maintaining the same
accuracy as floating-point embeddings but with a 32-fold compression. The code
is available at https://github.com/IBM/remote-sensing-image-retrieval.
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