论文标题

人工智能命令3D顶点重要性

Artificial Intelligence ordered 3D vertex importance

论文作者

Vasic, Iva, Vasic, Bata, Nikolic, Zorica

论文摘要

在许多研究领域,多维网络的排名至关重要,包括选择和确定决策的重要性。有些决定比其他决定要重要得多,而且它们的体重分类也显然。本文定义了一种全新的方法,用于使用人工智能确定三维网络顶点的重要性排名,从而改善现有有序统计的顶点提取和跟踪算法(OSVETA),并基于量化INDICE(QIM)和误差校正代码而进行跟踪算法(OSVETA)。我们在本文中提出的技术提供了重大提高确定的效率,即与统计OSVETA标准有关的网络顶点的重要性,用现代神经网络的精确预测方法代替了启发式方法。新的人工智能技术可以更好地对3D网格进行更好的定义,并更好地评估其拓扑特征。新方法贡献在定义稳定顶点方面具有更高的精度,从而显着降低了删除网格顶点的可能性。

Ranking vertices of multidimensional networks is crucial in many areas of research, including selecting and determining the importance of decisions. Some decisions are significantly more important than others, and their weight categorization is also imortant. This paper defines a completely new method for determining the weight decisions using artificial intelligence for importance ranking of three-dimensional network vertices, improving the existing Ordered Statistics Vertex Extraction and Tracking Algorithm (OSVETA) based on modulation of quantized indices (QIM) and error correction codes. The technique we propose in this paper offers significant improvements the efficiency of determination the importance of network vertices in relation to statistical OSVETA criteria, replacing heuristic methods with methods of precise prediction of modern neural networks. The new artificial intelligence technique enables a significantly better definition of the 3D meshes and a better assessment of their topological features. The new method contributions result in a greater precision in defining stable vertices, significantly reducing the probability of deleting mesh vertices.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源