To improve the viewer's Quality of Experience (QoE) and optimize computer graphics applications, 3D model quality assessment (3D-QA) has become an important task in the multimedia area. Point cloud and mesh are the two most widely used digital representation formats of 3D models, the visual quality of which is quite sensitive to lossy operations like simplification and compression. Therefore, many related studies such as point cloud quality assessment (PCQA) and mesh quality assessment (MQA) have been carried out to measure the caused visual quality degradations. However, a large part of previous studies utilizes full-reference (FR) metrics, which means they may fail to predict the quality level with the absence of the reference 3D model. Furthermore, few 3D-QA metrics are carried out to consider color information, which significantly restricts the effectiveness and scope of application. In this paper, we propose a no-reference (NR) quality assessment metric for colored 3D models represented by both point cloud and mesh. First, we project the 3D models from 3D space into quality-related geometry and color feature domains. Then, the natural scene statistics (NSS) and entropy are utilized to extract quality-aware features. Finally, the Support Vector Regressor (SVR) is employed to regress the quality-aware features into quality scores. Our method is mainly validated on the colored point cloud quality assessment database (SJTU-PCQA) and the colored mesh quality assessment database (CMDM). The experimental results show that the proposed method outperforms all the state-of-art NR 3D-QA metrics and obtains an acceptable gap with the state-of-art FR 3D-QA metrics.


翻译:为提高浏览者的经验质量(QoE)和优化计算机图形应用,3D模型质量评估(3D-QA)已成为多媒体领域的一项重要任务。点云和网状是3D模型中两种最广泛使用的数字代表格式,其视觉质量对简化和压缩等损失操作相当敏感。因此,已经开展了许多相关研究,如点云质量评估和网目质量评估(MQA),以测量导致的视觉质量退化。然而,大部分先前的研究都使用了全参照(FR)指标,这意味着它们可能无法预测质量水平,而没有3D模型。此外,很少进行3DQA和网网格计量,以考虑颜色信息,这极大地限制了应用的有效性和范围。在本文件中,我们建议对由点云和网目代表的彩色3D模型进行无参照(NRQA)质量评估。首先,我们将3D模型用于与质量有关的3DQQ(FR)指标和彩色度数据评估,然后将自然图像数据库用于我们使用的直径数据。

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