三维形状生成中的记忆化现象:一项实证研究 / Memorization in 3D Shape Generation: An Empirical Study
1️⃣ 一句话总结
这篇论文通过设计一个评估框架,量化了3D生成模型对训练数据的记忆程度,并发现数据模态、多样性以及模型设计(如引导强度和增强技术)都会影响记忆化,进而提出了在不降低生成质量的前提下减少记忆化的有效策略。
Generative models are increasingly used in 3D vision to synthesize novel shapes, yet it remains unclear whether their generation relies on memorizing training shapes. Understanding their memorization could help prevent training data leakage and improve the diversity of generated results. In this paper, we design an evaluation framework to quantify memorization in 3D generative models and study the influence of different data and modeling designs on memorization. We first apply our framework to quantify memorization in existing methods. Next, through controlled experiments with a latent vector-set (Vecset) diffusion model, we find that, on the data side, memorization depends on data modality, and increases with data diversity and finer-grained conditioning; on the modeling side, it peaks at a moderate guidance scale and can be mitigated by longer Vecsets and simple rotation augmentation. Together, our framework and analysis provide an empirical understanding of memorization in 3D generative models and suggest simple yet effective strategies to reduce it without degrading generation quality. Our code is available at this https URL.
三维形状生成中的记忆化现象:一项实证研究 / Memorization in 3D Shape Generation: An Empirical Study
这篇论文通过设计一个评估框架,量化了3D生成模型对训练数据的记忆程度,并发现数据模态、多样性以及模型设计(如引导强度和增强技术)都会影响记忆化,进而提出了在不降低生成质量的前提下减少记忆化的有效策略。
源自 arXiv: 2512.23628