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Compressive Neural Representations of Volumetric Scalar Fields

About

We present an approach for compressing volumetric scalar fields using implicit neural representations. Our approach represents a scalar field as a learned function, wherein a neural network maps a point in the domain to an output scalar value. By setting the number of weights of the neural network to be smaller than the input size, we achieve compressed representations of scalar fields, thus framing compression as a type of function approximation. Combined with carefully quantizing network weights, we show that this approach yields highly compact representations that outperform state-of-the-art volume compression approaches. The conceptual simplicity of our approach enables a number of benefits, such as support for time-varying scalar fields, optimizing to preserve spatial gradients, and random-access field evaluation. We study the impact of network design choices on compression performance, highlighting how simple network architectures are effective for a broad range of volumes.

Yuzhe Lu, Kairong Jiang, Joshua A. Levine, Matthew Berger• 2021

Related benchmarks

TaskDatasetResultRank
2D Slice ReconstructionTNNI1
PSNR39.25
7
2D Slice ReconstructionrDL-LSM
PSNR30.32
7
2D Slice ReconstructionhiPSC
PSNR21.61
7
2D Slice ReconstructionTribolium
PSNR32.59
7
2D Slice ReconstructionABUS
PSNR19.85
7
Volume ReconstructionIsabel 500x500x100 100MB
PSNR (dB)47.61
4
Volume ReconstructionCombustion 480x720x120
PSNR (dB)47.7
4
Volume ReconstructionFoot 500x500x360
PSNR (dB)44.83
4
Volume ReconstructionVortex 512x512x512 (512MB)
PSNR (dB)60.02
4
Volume ReconstructionHeptane 512x512x512 512MB
PSNR (dB)47.35
4
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