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LLM-Guided Cross-Modal Point Cloud Quality Assessment: A Graph Learning Approach

Wuyuan Xie, Yunheng Liu, Kaiming Wang, Miaohui Wang

2024IEEE Signal Processing Letters15 citationsDOI

Abstract

This paper addresses the critical need for accurate and reliable point cloud quality assessment (PCQA) in various applications, such as autonomous driving, robotics, virtual reality, and 3D reconstruction. To meet this need, we propose a large language model (LLM)-guided PCQA approach based on graph learning. Specifically, we first utilize the LLM to generate quality description texts for each 3D object, and employ two CLIP-like feature encoders to represent the image and text modalities. Next, we design a latent feature enhancer module to improve contrastive learning, enabling more effective alignment performance. Finally, we develop a graph network fusion module that utilizes a ranking-based loss to adjust the relationship of different nodes, which explicitly considers both modality fusion and quality ranking. Experimental results on three benchmark datasets demonstrate the effectiveness and superiority of our approach over 12 representative PCQA methods, which demonstrate the potential of multi-modal learning, the importance of latent feature enhancement, and the significance of graph-based fusion in advancing the field of PCQA.

Topics & Concepts

Computer sciencePoint cloudCloud computingModalGraphQuality (philosophy)Quality assessmentArtificial intelligenceMachine learningData miningTheoretical computer scienceReliability engineeringEngineeringEvaluation methodsChemistryOperating systemEpistemologyPolymer chemistryPhilosophy3D Shape Modeling and AnalysisSurface Roughness and Optical MeasurementsRemote Sensing and LiDAR Applications
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