Fast and Robust Mesh Simplification for Generated and Real-World 3D Assets
Kunal Bhosikar, Preet Savalia, Lokender Tiwari, Brojeshwar Bhowmick

TL;DR
This paper introduces FA-QEM, a fast, robust mesh simplification method that preserves geometric features and improves downstream texture mapping for modern 3D assets from various sources.
Contribution
The paper presents a novel multi-term quadric error metric for mesh simplification that maintains sharp features and enhances appearance transfer, outperforming existing methods.
Findings
FA-QEM achieves lower geometric error than existing methods.
It offers faster runtimes while maintaining robustness.
It improves quality of texture mapping on simplified meshes.
Abstract
The rapid growth of 3D content from modern reconstruction and generative pipelines, such as neural rendering and large-scale 3D asset generation, has led to an abundance of dense, noisy, and often non-manifold meshes. While these representations achieve high visual fidelity, their complexity poses significant challenges for downstream applications in simulation, AR/VR, and scientific computing, where efficient and reliable geometry is essential. This necessitates mesh simplification methods that are not only fast and robust to "in-the-wild" inputs, but also capable of preserving fine geometric structures and high-quality appearance. In this paper, we propose Feature-Aware Quadric Error Metric (FA-QEM), a comprehensive mesh simplification pipeline designed for modern 3D assets. Our approach introduces a novel multi-term quadric error formulation that jointly encodes geometric deviation,…
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