OmniSciences Technical Report TR-2026-001 We present benchmark results for a proprietary geometric feature extraction method applied to polarimetric SAR (PolSAR) terrain classification. The method derives compact feature vectors from the Riemannian structure of Hermitian positive-definite coherency matrices on the symmetric space GL(3,ℂ)/U(3). Key results on AIRSAR San Francisco (5-class, L-band): 96.73% overall accuracy with ResNet-SE (15×15 patches, 1% training) — competitive with state-of-the-art complex-valued CNNs (SDF2Net: 97.13%) +9.3 percentage point advantage in few-shot regime (n=5 samples/class) Geometric features subsume raw coherency matrix input Feature extraction methods are patent-pending. This report presents results only; methods will be disclosed in a forthcoming publication.
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