TL;DR
This paper introduces a novel no-reference geometry quality assessment method for colorless point clouds, leveraging list-wise rank learning to directly optimize quality ranking without requiring reference data.
Contribution
It proposes LRL-GQA, a new approach combining a geometry quality network and list-wise rank learning, addressing the lack of large-scale datasets and improving quality ranking accuracy.
Findings
Outperforms existing full-reference GQA metrics
Effective in ranking geometry distortions
Can be fine-tuned for absolute quality scores
Abstract
Geometry quality assessment (GQA) of colorless point clouds is crucial for evaluating the performance of emerging point cloud-based solutions (e.g., watermarking, compression, and 3-Dimensional (3D) reconstruction). Unfortunately, existing objective GQA approaches are traditional full-reference metrics, whereas state-of-the-art learning-based point cloud quality assessment (PCQA) methods target both color and geometry distortions, neither of which are qualified for the no-reference GQA task. In addition, the lack of large-scale GQA datasets with subjective scores, which are always imprecise, biased, and inconsistent, also hinders the development of learning-based GQA metrics. Driven by these limitations, this paper proposes a no-reference geometry-only quality assessment approach based on list-wise rank learning, termed LRL-GQA, which comprises of a geometry quality assessment network…
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