Scientific Data Compression and Super-Resolution Sampling
By: Minh Vu, Andrey Lokhov
Potential Business Impact:
Saves space, recovers lost data, keeps science accurate.
Modern scientific simulations, observations, and large-scale experiments generate data at volumes that often exceed the limits of storage, processing, and analysis. This challenge drives the development of data reduction methods that efficiently manage massive datasets while preserving essential physical features and quantities of interest. In many scientific workflows, it is also crucial to enable data recovery from compressed representations - a task known as super-resolution - with guarantees on the preservation of key physical characteristics. A notable example is checkpointing and restarting, which is essential for long-running simulations to recover from failures, resume after interruptions, or examine intermediate results. In this work, we introduce a novel framework for scientific data compression and super-resolution, grounded in recent advances in learning exponential families. Our method preserves and quantifies uncertainty in physical quantities of interest and supports flexible trade-offs between compression ratio and reconstruction fidelity.
Similar Papers
MRI Super-Resolution with Deep Learning: A Comprehensive Survey
Image and Video Processing
Makes blurry MRI scans sharp and clear.
Learning Single-Image Super-Resolution in the JPEG Compressed Domain
CV and Pattern Recognition
Makes AI learn faster by skipping image decoding.
Toward Storage-Aware Learning with Compressed Data An Empirical Exploratory Study on JPEG
Machine Learning (CS)
Saves phone space by smartly shrinking data.