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Regularized Multi-Decoder Ensemble for an Error-Aware Scene Representation Network

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Feature grid Scene Representation Networks (SRNs) have been applied to scientific data as compact functional surrogates for analysis and visualization. As SRNs are black-box lossy data representations, assessing the prediction quality is critical for scientific visualization applications to ensure that scientists can trust the information being visualized. Currently, existing architectures do not support inference time reconstruction quality assessment, as coordinate-level errors cannot be evaluated in the absence of ground truth data. We propose a parameter-efficient multi-decoder SRN (MDSRN) ensemble architecture consisting of a shared feature grid with multiple lightweight multi-layer perceptron decoders. MDSRN can generate a set of plausible predictions for a given input coordinate to compute the mean as the prediction of the multi-decoder ensemble and the variance as a confidence score. The coordinate-level variance can be rendered along with the data to inform the reconstruction quality, or be integrated into uncertainty-aware volume visualization algorithms. To prevent the misalignment between the quantified variance and the prediction quality, we propose a novel variance regularization loss for ensemble learning that promotes the Regularized multi-decoder SRN (RMDSRN) to obtain a more reliable variance that correlates closely to the true model error. We comprehensively evaluate the quality of variance quantification and data reconstruction of Monte Carlo Dropout, Mean Field Variational Inference, Deep Ensemble, and Predicting Variance compared to the proposed MDSRN and RMDSRN across diverse scalar field datasets. We demonstrate that RMDSRN attains the most accurate data reconstruction and competitive variance-error correlation among uncertain SRNs under the same neural network parameter budgets.

Tianyu Xiong, Skylar W. Wurster, Hanqi Guo, Tom Peterka, Han-Wei Shen• 2024

Related benchmarks

TaskDatasetResultRank
Volume ReconstructionTeardrop 128x128x128 8MB
PSNR (dB)77.79
4
Volume ReconstructionCombustion 480x720x120
PSNR (dB)43.01
4
Volume ReconstructionVortex 512x512x512 (512MB)
PSNR (dB)58.39
4
Volume ReconstructionIsabel 500x500x100 100MB
PSNR (dB)43.79
4
Volume ReconstructionFoot 500x500x360
PSNR (dB)42.39
4
Volume ReconstructionHeptane 512x512x512 512MB
PSNR (dB)41.22
4
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