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CWF: Consolidating Weak Features in High-quality Mesh Simplification
April 25, 2024, 7:45 p.m. | Rui Xu, Longdu Liu, Ningna Wang, Shuangmin Chen, Shiqing Xin, Xiaohu Guo, Zichun Zhong, Taku Komura, Wenping Wang, Changhe Tu
cs.CV updates on arXiv.org arxiv.org
Abstract: In mesh simplification, common requirements like accuracy, triangle quality, and feature alignment are often considered as a trade-off. Existing algorithms concentrate on just one or a few specific aspects of these requirements. For example, the well-known Quadric Error Metrics (QEM) approach prioritizes accuracy and can preserve strong feature lines/points as well but falls short in ensuring high triangle quality and may degrade weak features that are not as distinctive as strong ones. In this paper, …
abstract accuracy algorithms alignment arxiv cs.cg cs.cv cs.gr error example feature features mesh metrics quality requirements trade trade-off type
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