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No-reference Point Cloud Geometry Quality Assessment Based on Pairwise Rank Learning
Objective geometry quality assessment of point clouds is essential to
evaluate the performance of a wide range of point cloud-based solutions, such
as denoising, simplification, reconstruction, and watermarking. Existing point
cloud quality assessment (PCQA) methods dedicate to assigning absolute quality
scores to distorted point clouds. Their performance is strongly reliant on the
quality and quantity of subjective ground-truth scores for training, which are
challenging to gather and have been shown to be imprecise, biased, and
inconsistent. Furthermore, the majority of existing objective geometry quality
assessment approaches are carried out by full-reference traditional metrics. So
far, point-based no-reference geometry-only quality assessment techniques have
not yet been investigated. This paper presents PRL-GQA, the first pairwise
learning framework for no-reference geometry-only quality assessment of point
clouds, to the best of our knowledge. The proposed PRL-GQA framework employs a
siamese deep architecture, which takes as input a pair of point clouds and
outputs their rank order. Each siamese architecture branch is a geometry
quality assessment network (GQANet), which is designed to extract multi-scale
quality-aware geometric features and output a quality index for the input point
cloud. Then, based on the predicted quality indexes, a pairwise rank learning
module is introduced to rank the relative quality of a pair of degraded point
clouds.Extensive experiments demonstrate the effectiveness of the proposed
PRL-GQA framework. Furthermore, the results also show that the fine-tuned
no-reference GQANet performs competitively when compared to existing
full-reference geometry quality assessment metrics
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