No-Reference Point Cloud Quality Assessment via Domain Adaptation
Qi Yang, Yipeng Liu, Siheng Chen, Yiling Xu, Jun Sun

TL;DR
This paper introduces a novel no-reference point cloud quality assessment method that leverages domain adaptation from natural images, enabling effective quality prediction without large-scale subjective datasets.
Contribution
It proposes a domain adaptation framework transferring human perception criteria from images to 3D point clouds using unsupervised adversarial learning.
Findings
Outperforms traditional no-reference metrics
Achieves results comparable to full-reference metrics
Demonstrates feasibility of content-specific quality assessment without subjective data
Abstract
We present a novel no-reference quality assessment metric, the image transferred point cloud quality assessment (IT-PCQA), for 3D point clouds. For quality assessment, deep neural network (DNN) has shown compelling performance on no-reference metric design. However, the most challenging issue for no-reference PCQA is that we lack large-scale subjective databases to drive robust networks. Our motivation is that the human visual system (HVS) is the decision-maker regardless of the type of media for quality assessment. Leveraging the rich subjective scores of the natural images, we can quest the evaluation criteria of human perception via DNN and transfer the capability of prediction to 3D point clouds. In particular, we treat natural images as the source domain and point clouds as the target domain, and infer point cloud quality via unsupervised adversarial domain adaptation. To extract…
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Taxonomy
TopicsInfrared Thermography in Medicine · 3D Shape Modeling and Analysis · Industrial Vision Systems and Defect Detection
