Neural Image Compression
Neural image compression uses deep learning to achieve superior rate-distortion performance compared to traditional methods, aiming to minimize data size while preserving image quality. Current research focuses on improving model efficiency and controllability, exploring architectures like variational autoencoders and transformers, often incorporating techniques such as predictive coding, adaptive quantization, and generative models to enhance both objective and perceptual fidelity. These advancements are significant for applications requiring efficient image storage and transmission, particularly in resource-constrained environments and for large-scale multimedia data management.
Papers
November 18, 2024
September 19, 2024
July 29, 2024
July 16, 2024
May 27, 2024
May 7, 2024
May 6, 2024
April 16, 2024
March 25, 2024
March 24, 2024
March 5, 2024
January 31, 2024
January 25, 2024
November 6, 2023
September 26, 2023
September 20, 2023
September 6, 2023
August 15, 2023
August 4, 2023