2022
DOI: 10.48550/arxiv.2202.02397
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Textured Mesh Quality Assessment: Large-Scale Dataset and Deep Learning-based Quality Metric

Abstract: Over the past decade, 3D graphics have become highly detailed to mimic the real world, exploding their size and complexity and making them subject to lossy processing operations that may degrade their visual quality. Thus, to ensure the best Quality of Experience (QoE), it is important to evaluate the visual quality to accurately drive the processing operation to find the right compromise between visual quality and data size. In this work, we evaluate the quality of textured 3D meshes. We first establish a lar… Show more

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Cited by 2 publications
(5 citation statements)
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“…Source of the 3D model: LIRIS's datasets library. 54 Fig. 7 3D reconstruction of a graphosoma immersed in a cube of epoxy resin, seen from three angles, obtained by our RMVS solving method from 18 synthetic images such as those in Fig.…”
Section: Cubic Interfacementioning
confidence: 99%
“…Source of the 3D model: LIRIS's datasets library. 54 Fig. 7 3D reconstruction of a graphosoma immersed in a cube of epoxy resin, seen from three angles, obtained by our RMVS solving method from 18 synthetic images such as those in Fig.…”
Section: Cubic Interfacementioning
confidence: 99%
“…Pioneering subjective quality tests involving meshes were conducted on still rendered images [33,34]; those two early studies both assessed the visual impact of simplification artifacts and concerned static and geometry-only meshes; the same applies in [35], which evaluated the impact of geometry compression. Subsequent passive interaction experiments considered meshes with color/texture attributes [36][37][38][39][40][41] or dynamic meshes [8,42,43]. These studies are detailed below.…”
Section: User Studies For Meshesmentioning
confidence: 99%
“…It is worth mentioning that crowd-sourcing is quite faster to evaluate large datasets, yet the most time intensive task is building and designing the experimental framework (or setup) (user-friendly tool, control viewer environment, add screening test, etc.). Based on these findings, a largescale crowd-sourcing experiment was conducted to rate the perceived quality of the largest dataset of textured meshes to this date [41]. This dataset allowed to analyze the impact of the distortions and model characteristics (geometric and color complexity) on the perceived quality of textured meshes.…”
Section: User Studies For Meshesmentioning
confidence: 99%
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