Light-Field Image Compression Based on a Two-Dimensional Prediction Coding Structure

Information Pub Date : 2024-06-07 DOI:10.3390/info15060339
Jianrui Shao, Enjian Bai, Xueqin Jiang, Yun Wu
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Abstract

Light-field images (LFIs) are gaining increased attention within the field of 3D imaging, virtual reality, and digital refocusing, owing to their wealth of spatial and angular information. The escalating volume of LFI data poses challenges in terms of storage and transmission. To address this problem, this paper introduces an MSHPE (most-similar hierarchical prediction encoding) structure based on light-field multi-view images. By systematically exploring the similarities among sub-views, our structure obtains residual views through the subtraction of the encoded view from its corresponding reference view. Regarding the encoding process, this paper implements a new encoding scheme to process all residual views, achieving lossless compression. High-efficiency video coding (HEVC) is applied to encode select residual views, thereby achieving lossy compression. Furthermore, the introduced structure is conceptualized as a layered coding scheme, enabling progressive transmission and showing good random access performance. Experimental results demonstrate the superior compression performance attained by encoding residual views according to the proposed structure, outperforming alternative structures. Notably, when HEVC is employed for encoding residual views, significant bit savings are observed compared to the direct encoding of original views. The final restored view presents better detail quality, reinforcing the effectiveness of this approach.
基于二维预测编码结构的光场图像压缩
光场图像(LFIs)因其丰富的空间和角度信息,在三维成像、虚拟现实和数字再聚焦领域日益受到关注。光场成像数据量的不断增加给存储和传输带来了挑战。为解决这一问题,本文介绍了一种基于光场多视角图像的 MSHPE(最相似分层预测编码)结构。通过系统地探索子视图之间的相似性,我们的结构通过从相应的参考视图中减去编码视图来获得剩余视图。在编码过程中,本文采用了一种新的编码方案来处理所有残余视图,从而实现无损压缩。高效视频编码(HEVC)用于对选定的残留视图进行编码,从而实现有损压缩。此外,引入的结构被概念化为分层编码方案,可实现渐进式传输,并显示出良好的随机存取性能。实验结果表明,根据所提出的结构对残余视图进行编码,可获得优于其他结构的压缩性能。值得注意的是,当采用 HEVC 对残留视图进行编码时,与直接对原始视图进行编码相比,可显著节省比特。最终还原的视图呈现出更好的细节质量,增强了这种方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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