Low-Complexity Overfitted Neural Image Codec
Thomas Leguay, Théo Ladune, Pierrick Philippe, Gordon Clare, Félix Henry, Olivier Déforges
Abstract
We propose a neural image codec at reduced complexity which overfits the decoder parameters to each input image. While autoencoders perform up to a million multiplications per decoded pixel, the proposed approach only requires 2300 multiplications per pixel. Albeit low-complexity, the method rivals autoencoder performance and surpasses HEVC performance under various coding conditions. Additional lightweight modules and an improved training process provide a 14% rate reduction with respect to previous overfitted codecs, while offering a similar complexity. This work is made open-source at http://orange-opensource.github.io/Cool-Chic/.
Topics & Concepts
CodecComputer sciencePixelAutoencoderComputational complexity theoryCoding (social sciences)Artificial intelligenceDecoding methodsEncoderImage (mathematics)Artificial neural networkComputer visionComputer engineeringPattern recognition (psychology)AlgorithmComputer hardwareMathematicsOperating systemStatisticsVideo Coding and Compression TechnologiesAdvanced Vision and ImagingAdvanced Image Processing Techniques