Approximately Invertible Neural Network for Learned Image Compression
Yanbo Gao, Meng Fu, Shuai Li, Chong Lv, Xun Cai, Hui Yuan, Mao Ye

TL;DR
This paper introduces an Approximately Invertible Neural Network framework for learned image compression, leveraging invertible modules to improve high-quality image encoding and decoding by reducing quantization noise.
Contribution
It proposes a novel A-INN framework with modules for denoising, feature recovery, and high-frequency enhancement, addressing limitations of independent transform designs.
Findings
A-INN outperforms existing learned image compression methods.
The framework effectively reduces quantization noise in image reconstruction.
The proposed modules improve preservation of high-frequency image details.
Abstract
Learned image compression have attracted considerable interests in recent years. It typically comprises an analysis transform, a synthesis transform, quantization and an entropy coding model. The analysis transform and synthesis transform are used to encode an image to latent feature and decode the quantized feature to reconstruct the image, and can be regarded as coupled transforms. However, the analysis transform and synthesis transform are designed independently in the existing methods, making them unreliable in high-quality image compression. Inspired by the invertible neural networks in generative modeling, invertible modules are used to construct the coupled analysis and synthesis transforms. Considering the noise introduced in the feature quantization invalidates the invertible process, this paper proposes an Approximately Invertible Neural Network (A-INN) framework for learned…
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Taxonomy
TopicsNeural Networks and Applications · Image and Signal Denoising Methods · Advanced Data Compression Techniques
