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No-Reference Bitstream-Layer Model for Perceptual Quality Assessment of V-PCC Encoded Point Clouds

Qi Liu, Honglei Su, Tianxin Chen, Hui Yuan, Raouf Hamzaoui

2022IEEE Transactions on Multimedia37 citationsDOIOpen Access PDF

Abstract

No-reference bitstream-layer models for point cloud quality assessment (PCQA) use the information extracted from a bitstream for real-time and nonintrusive quality monitoring. We propose a no-reference bitstream-layer model for the perceptual quality assessment of video-based point cloud compression (V-PCC) encoded point clouds. First, we study the relationship between the perceptual coding distortion and the texture quantization parameter (TQP) when geometry encoding is lossless. The results indicate that the perceptual coding distortion depends on the texture complexity (TC). Next, we estimate TC using TQP and the texture bitrate per pixel (TBPP), both of which are extracted from the compressed bitstream without resorting to complete decoding. This allows us to build a texture distortion model as a function of TQP and TBPP. By combining this texture distortion model with a geometry distortion model that depends on the geometry quantization parameter (GQP), we obtain an overall no-reference bitstream-layer PCQA model that we call bitstreamPCQ. Experimental results show that the proposed model markedly outperforms existing models in terms of widely used performance criteria, including the Pearson linear correlation coefficient (PLCC), the Spearman rank order correlation coefficient (SRCC) and the root mean square error (RMSE).

Topics & Concepts

BitstreamComputer scienceQuantization (signal processing)AlgorithmData compressionLossless compressionCoding (social sciences)Artificial intelligenceComputer visionResidualPixelScalable Video CodingDecoding methodsMathematicsStatisticsMotion compensationImage and Video Quality Assessment3D Shape Modeling and AnalysisComputer Graphics and Visualization Techniques
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