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1 week ago

Why Neural Fields Beat Grid-Based Methods for Spatiotemporal Imaging

It is difficult to reconstruct dynamic images from undersampled data because motion is ignored, producing wildly inaccurate results. Although neural fields provide a continuous and lightweight representation, previous research mostly relied on implicit smoothness. This study uses the optical flow equation for 2D+time computed tomography to improve neural fields using explicit PDE-based motion regularization.

Source: HackerNoon →


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