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LVQAC: Lattice Vector Quantization Coupled with...
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LVQAC: Lattice Vector Quantization Coupled with Spatially Adaptive Companding for Efficient Learned Image Compression

Abstract

Recently, numerous end-to-end optimized image compression neural networks have been developed and proved themselves as leaders in rate-distortion performance. The main strength of these learnt compression methods is in powerful nonlinear analysis and synthesis transforms that can be facilitated by deep neural networks. However, out of operational expediency, most of these end-to-end methods adopt uniform scalar quantizers rather than vector quantizers, which are information-theoretically optimal. In this paper, we present a novel Lattice Vector Quantization scheme coupled with a spatially Adaptive Companding (LVQAC) mapping. LVQ can better exploit the inter-feature dependencies than scalar uniform quantization while being computationally almost as simple as the latter. Moreover, to improve the adaptability of LVQ to source statistics, we couple a spatially adaptive companding (AC) mapping with LVQ. The resulting LVQAC design can be easily embedded into any end-to-end optimized image compression system. Extensive experiments demonstrate that for any end-to-end CNN image compression models, replacing uniform quantiter by LVQAC achieves better rate-distortion performance without significantly increasing the model complexity.

Authors

Zhang X; Wu X

Volume

00

Pagination

pp. 10239-10248

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

June 24, 2023

DOI

10.1109/cvpr52729.2023.00987

Name of conference

2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)
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