网格显著性统一方法:通过虚拟现实和多功能预测评估纹理和非纹理网格

Kaiwei Zhang, Dandan Zhu, Xiongkuo Min, Guangtao Zhai
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引用次数: 0

摘要

网格突出旨在赋予人工智能强大的适应能力,以突出自然吸引视觉注意力的区域。现有研究主要强调几何形状在确定网格显著性中的关键作用,但如何灵活地感知复杂纹理图案的真实感所带来的独特视觉吸引力仍是一项挑战。为了研究几何形状和纹理特征在视觉感知中的相互作用,我们建立了一个全面的网格突出度数据集,捕捉了相同三维模型在无纹理和有纹理条件下的突出度分布。此外,我们还提出了适用于各种网格类型的统一突出度预测模型,为详细建模和现实渲染应用提供了宝贵的见解。该模型可有效分析网格的几何结构,同时将纹理特征无缝纳入拓扑框架,确保整个外观增强建模的一致性。通过广泛的理论和经验验证,我们的方法不仅提高了不同网格类型的性能,还证明了该模型的可扩展性和通用性,特别是通过对各种视觉特征的交叉验证。
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Unified Approach to Mesh Saliency: Evaluating Textured and Non-Textured Meshes Through VR and Multifunctional Prediction.

Mesh saliency aims to empower artificial intelligence with strong adaptability to highlight regions that naturally attract visual attention. Existing advances primarily emphasize the crucial role of geometric shapes in determining mesh saliency, but it remains challenging to flexibly sense the unique visual appeal brought by the realism of complex texture patterns. To investigate the interaction between geometric shapes and texture features in visual perception, we establish a comprehensive mesh saliency dataset, capturing saliency distributions for identical 3D models under both non-textured and textured conditions. Additionally, we propose a unified saliency prediction model applicable to various mesh types, providing valuable insights for both detailed modeling and realistic rendering applications. This model effectively analyzes the geometric structure of the mesh while seamlessly incorporating texture features into the topological framework, ensuring coherence throughout appearance-enhanced modeling. Through extensive theoretical and empirical validation, our approach not only enhances performance across different mesh types, but also demonstrates the model's scalability and generalizability, particularly through cross-validation of various visual features.

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