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EMAG: Differentiable 4D Gaussian Mixture Splatting for EEG Spatial Super-Resolution

About

High-density electroencephalography (HD-EEG) enables fine-grained measurement of cortical activity but requires expensive hardware and lengthy setup times, limiting its clinical and research accessibility. We propose EMAG (EEG Mixture of Anisotropic Gaussians), a differentiable framework that reconstructs HD-EEG signals from a sparse subset of low-density (LD) electrodes by representing brain electrical sources as a mixture of anisotropic 4D space-time Gaussians. EMAG places a mixture of multiple Gaussians at each point of a spherical brain grid, each parameterized by a full 4 x 4 precision matrix, enabling anisotropic spatial spreads and explicit coupling between spatial and temporal dimensions. The forward model renders scalp EEG via differentiable Gaussian field contributions at electrode locations, enabling end-to-end training without explicit source localization supervision. We evaluate EMAG on three public EEG benchmarks (Localize-MI, SEED, and SEED-IV) at super-resolution factors of 2x through 8/16x. EMAG outperforms the current state-of-the-art EEG super-resolution method at most super-resolution factors on three standard benchmarks (Localize-MI, SEED, SEED-IV). The explicit Gaussian parameterization further enables direct visualization and interpretability of learned brain source configurations, potentially opening avenues for clinical and neuroscientific applications, such as source localization or biomarker discovery.

Alex Lazarovich, Ofir Itzhak Shahar, Gur Elkin, Ohad Ben-Shahar• 2026

Related benchmarks

TaskDatasetResultRank
EEG Super-ResolutionLocalize-MI 256 ch.
NMSE0.0856
32
EEG Super-ResolutionSEED 62 ch.
NMSE0.1545
24
EEG Super-ResolutionSEED-IV 62 ch.
NMSE0.1153
24
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