SPERR is a lossy scientific (floating-point) data compressor that produces one of the best rate-distortion curves.
-
Updated
May 19, 2024 - C++
SPERR is a lossy scientific (floating-point) data compressor that produces one of the best rate-distortion curves.
JPEG XL image format reference implementation
📦 Minecraft: Java Edition resource and data pack optimizer which aims to achieve the best possible compression, performance and protection, improving pack distribution, storage and in-game load times.
Authors' PyTorch implementation of lossy image compression methods that are based on hierarchical VAEs
A GPU accelerated error-bounded lossy compression for scientific data.
Step-Selected Differential Pulse Code Modulation audio codec, format specification and implementation
fortran version of zfp C code example - simple compressor
Test file to check Fortran bindings to the SZ3 library for lossy compression
A registered ZFP compression plugin for HDF5
Fortran interface bindings to sperr
NHW : A Next-Generation Image Compression Codec
Optimally compress image in browser to the target size
Implemented a naive indexer for Reuters21578. Implemented single-term query processing. Implmented and compared results of lossy dictionary compression
Some algorithms for lossy compression of images
An experimental image codec based on linear factor decomposition
An experiment sandbox for Deep Learning Data Loading analysis.
[CVPR'19, ICLR'20] A Python toolbox for modeling and optimization of photo acquisition & distribution pipelines (camera ISP, compression, forensics, manipulation detection)
The "General Purpose Geospatial Compression" format for high efficiency lossy compression
Add a description, image, and links to the lossy-compression topic page so that developers can more easily learn about it.
To associate your repository with the lossy-compression topic, visit your repo's landing page and select "manage topics."