GeoNDC: A Queryable Neural Data Cube for Planetary-Scale Earth Observation
Jianbo Qi, Mengyao Li, Baogui Jiang, Yidan Chen, Xihan Mu, Qiao Wang

TL;DR
GeoNDC introduces a neural data cube that encodes global Earth observation data as a continuous neural field, enabling efficient, on-demand spatiotemporal queries and high-fidelity reconstructions at planetary scale.
Contribution
It presents GeoNDC, a novel neural representation that compresses and makes planetary-scale Earth observation data queryable without decompression.
Findings
Supports direct spatiotemporal queries on consumer hardware.
Recovers cloud-free dynamics with high fidelity under cloud occlusion.
Achieves 95:1 compression ratio with high spectral fidelity.
Abstract
Satellite Earth observation has accumulated massive spatiotemporal archives essential for monitoring environmental change, yet these remain organized as discrete raster files, making them costly to store, transmit, and query. We present GeoNDC, a queryable neural data cube that encodes planetary-scale Earth observation data as a continuous spatiotemporal implicit neural field, enabling on-demand queries and continuous-time reconstruction without full decompression. Experiments on a 20-year global MODIS MCD43A4 reflectance record ( pixels, 7 bands, 915 temporal frames) show that the learned representation supports direct spatiotemporal queries on consumer hardware. On Sentinel-2 imagery (10 m), continuous temporal parameterization recovers cloud-free dynamics with high fidelity () under simulated 2-km cloud occlusion. On HiGLASS biophysical products (LAI and…
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