MOC-3D: Manifold-Order Consistency for Text-to-3D Generation
Chenyang Fan, Junshi Cheng, Wen Yang, Zihong Li, Wenfeng Zhang, Wei Hu, Yi Zhang, Pan Zeng

TL;DR
MOC-3D introduces a novel approach for text-to-3D generation that enhances topological and micro-geometric consistency by leveraging semantic view-order constraints and manifold-based feature continuity.
Contribution
It proposes a new method combining semantic view-order and manifold-based modules to address macro-topological and micro-geometric issues in text-to-3D generation.
Findings
Improves macro-topological consistency, reducing the Janus problem.
Enhances micro-geometric detail continuity across views.
Achieves more coherent and detailed 3D models from text prompts.
Abstract
With the burgeoning development of fields such as the Metaverse, Virtual Reality (VR), and Digital Twins, text-to-3D generation has emerged as a research hotspot in both academia and industry. Currently, optimization methods based on Score Distillation Sampling (SDS) utilizing 2D diffusion priors have become the mainstream technological paradigm in this field. However, due to the view bias of 2D priors and the mode-seeking ambiguity combined with gradient noise induced by high Classifier-Free Guidance (CFG), these methods still suffer from macro-topological inconsistency (e.g., the Janus problem) and micro-geometric discontinuity. To address these challenges, we propose MOC-3D, a text-to-3D generation method based on geometric manifold and semantic view-order consistency. Built upon the ScaleDreamer framework, our method incorporates a Semantic View-Order Constraint Module and a…
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