Rethinking Autoregressive Models for Lossless Image Compression via Hierarchical Parallelism and Progressive Adaptation
PositiveArtificial Intelligence
- A new framework for lossless image compression has been introduced, focusing on autoregressive models that have been previously deemed impractical due to computational costs. The Hierarchical Parallel Autoregressive ConvNet (HPAC) utilizes hierarchical parallelism and progressive adaptation to improve efficiency and performance in image compression.
- This development is significant as it re
- While there are no directly related articles, the emphasis on optimizing computational efficiency and performance aligns with ongoing trends in AI research, highlighting the importance of practical applications in advanced image processing technologies.
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