4.7 Article

Context-Adaptive Neural Network-Based Prediction for Image Compression

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 29, Issue -, Pages 679-693

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2019.2934565

Keywords

Biological neural networks; Image coding; Predictive models; Decoding; Training; Convolutional neural networks; Image compression; intra prediction; neural networks

Funding

  1. French Defense Procurement Agency (DGA)

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This paper describes a set of neural network architectures, called Prediction Neural Networks Set (PNNS), based on both fully-connected and convolutional neural networks, for intra image prediction. The choice of neural network for predicting a given image block depends on the block size, hence does not need to be signalled to the decoder. It is shown that, while fully-connected neural networks give good performance for small block sizes, convolutional neural networks provide better predictions in large blocks with complex textures. Thanks to the use of masks of random sizes during training, the neural networks of PNNS well adapt to the available context that may vary, depending on the position of the image block to be predicted. When integrating PNNS into a H.265 codec, PSNR-rate performance gains going from 1.46 & x0025; to 5.20 & x0025; are obtained. These gains are on average 0.99 & x0025; larger than those of prior neural network based methods. Unlike the H.265 intra prediction modes, which are each specialized in predicting a specific texture, the proposed PNNS can model a large set of complex textures.

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