CVAug 18, 2016

Full Resolution Image Compression with Recurrent Neural Networks

arXiv:1608.05148v2884 citations
Originality Incremental advance
AI Analysis

It addresses image compression for applications requiring variable rates without retraining, representing a significant but incremental advance over prior neural methods.

This paper tackles full-resolution lossy image compression using neural networks, achieving improvements of 4.3%-8.8% AUC over previous methods and outperforming JPEG across most bitrates on the Kodak dataset.

This paper presents a set of full-resolution lossy image compression methods based on neural networks. Each of the architectures we describe can provide variable compression rates during deployment without requiring retraining of the network: each network need only be trained once. All of our architectures consist of a recurrent neural network (RNN)-based encoder and decoder, a binarizer, and a neural network for entropy coding. We compare RNN types (LSTM, associative LSTM) and introduce a new hybrid of GRU and ResNet. We also study "one-shot" versus additive reconstruction architectures and introduce a new scaled-additive framework. We compare to previous work, showing improvements of 4.3%-8.8% AUC (area under the rate-distortion curve), depending on the perceptual metric used. As far as we know, this is the first neural network architecture that is able to outperform JPEG at image compression across most bitrates on the rate-distortion curve on the Kodak dataset images, with and without the aid of entropy coding.

Code Implementations7 repos

Data from Papers with Code (CC-BY-SA-4.0)

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes