Light Field Compression with Disparity Guided Sparse Coding based on Structural Key Views
Jie Chen, Junhui Hou, Lap-Pui Chau

TL;DR
This paper introduces a novel light field compression method that leverages disparity-guided sparse coding with structural key views, significantly improving compression efficiency and visual quality over existing standards.
Contribution
It proposes a disparity-guided sparse coding approach based on structural key views for efficient light field data compression, with optimized key view selection and regional coding strategies.
Findings
Achieves 47.87% BD-rate reduction compared to HEVC.
Provides 1.59 dB BD-PSNR improvement on average.
Up to 4 dB improvement in low bit rate scenarios.
Abstract
Recent imaging technologies are rapidly evolving for sampling richer and more immersive representations of the 3D world. And one of the emerging technologies are light field (LF) cameras based on micro-lens arrays. To record the directional information of the light rays, a much larger storage space and transmission bandwidth are required by a LF image as compared with a conventional 2D image of similar spatial dimension, and the compression of LF data becomes a vital part of its application. In this paper, we propose a LF codec that fully exploits the intrinsic geometry between the LF sub-views by first approximating the LF with disparity guided sparse coding over a perspective shifted light field dictionary. The sparse coding is only based on several optimized Structural Key Views (SKV); however the entire LF can be recovered from the coding coefficients. By keeping the approximation…
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