Energy-Adaptive Bitstream-Layer Model for Perceptual Quality Assessment of V-PCC Encoded 3D Point Clouds

Wusi Sang;Honglei Su;Qi Liu;Hui Yuan;Zhou Wang
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Abstract

The scope of point cloud (PC) applications is expanding. We propose a no-reference bitstream-layer quality assessment model that eliminates the need for full decoding of the PC, providing quality evaluation scores during the V-PCC decoding process. Specifically, we illustrate the relationship between content diversity (CD) and perceptual coding distortion in lossless geometric coding. Subsequently, we model attribute distortion by predicting CD using transform energy (TE) and texture quantization parameter (TQP). By combining the geometric distortion model with geometry quantization parameters (GQP) and the attribute distortion model, we derive comprehensive quality prediction results. Our experimental results on four PC databases (WPC2.0, M-PCCD, VSENSE VVDB and VSENSE VVDB2) show that the proposed energy-adaptive bitstream-layer model (EABL) delivers competitive quality prediction performance in comparison with existing full-reference, reduced-reference and no-reference PC quality assessment models that require full decoding, and meanwhile exhibits large speed advantage. The source code will be made publicly available for repeatability research at https://github.com/arthas-sws/EABL_model.
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V-PCC编码三维点云感知质量评价的能量自适应比特流层模型
点云(PC)应用的范围正在扩大。我们提出了一种无参考比特流层质量评估模型,该模型消除了PC完全解码的需要,在V-PCC解码过程中提供质量评估分数。具体来说,我们阐述了无损几何编码中内容多样性(CD)与感知编码失真之间的关系。随后,利用变换能量(TE)和纹理量化参数(TQP)对CD进行预测,建立属性失真模型。通过结合几何量化参数(GQP)的几何畸变模型和属性畸变模型,得出综合质量预测结果。在WPC2.0、M-PCCD、VSENSE VVDB和VSENSE VVDB2 4个PC数据库上的实验结果表明,与现有的全参考、减少参考和无参考PC质量评估模型相比,本文提出的能量自适应比特流层模型(EABL)具有较好的质量预测性能,同时具有较大的速度优势。源代码将在https://github.com/arthas-sws/EABL_model上公开,用于可重复性研究。
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