Variable Rate Neural Compression for Sparse Detector Data
Yi Huang, Yeonju Go, Jin Huang, Shuhang Li, Xihaier Luo, Thomas, Marshall, Joseph Osborn, Christopher Pinkenburg, Yihui Ren, Evgeny Shulga,, Shinjae Yoo, Byung-Jun Yoon

TL;DR
This paper introduces BCAE-VS, a deep learning-based variable rate compression method tailored for sparse detector data in particle physics, significantly improving accuracy, efficiency, and adaptability over previous models.
Contribution
The paper presents a novel sparse convolution-based neural compression algorithm that adapts to data sparsity, achieving higher accuracy and throughput with smaller model size.
Findings
BCAE-VS improves reconstruction accuracy by 75% over previous models.
It increases compression ratio by 10%.
Model throughput increases with data sparsity.
Abstract
High-energy large-scale particle colliders generate data at extraordinary rates. Developing real-time high-throughput data compression algorithms to reduce data volume and meet the bandwidth requirement for storage has become increasingly critical. Deep learning is a promising technology that can address this challenging topic. At the newly constructed sPHENIX experiment at the Relativistic Heavy Ion Collider, a Time Projection Chamber (TPC) serves as the main tracking detector, which records three-dimensional particle trajectories in a volume of a gas-filled cylinder. In terms of occupancy, the resulting data flow can be very sparse reaching for proton-proton collisions. Such sparsity presents a challenge to conventional learning-free lossy compression algorithms, such as SZ, ZFP, and MGARD. In contrast, emerging deep learning-based models, particularly those utilizing…
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Taxonomy
TopicsImage and Signal Denoising Methods · Sparse and Compressive Sensing Techniques · Advanced Data Compression Techniques
