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📄 Abstract - Frequency-Adaptive Sharpness Regularization for Improving 3D Gaussian Splatting Generalization

Despite 3D Gaussian Splatting (3DGS) excelling in most configurations, it lacks generalization across novel viewpoints in a few-shot scenario because it overfits to the sparse observations. We revisit 3DGS optimization from a machine learning perspective, framing novel view synthesis as a generalization problem to unseen viewpoints-an underexplored direction. We propose Frequency-Adaptive Sharpness Regularization (FASR), which reformulates the 3DGS training objective, thereby guiding 3DGS to converge toward a better generalization solution. Although Sharpness-Aware Minimization (SAM) similarly reduces the sharpness of the loss landscape to improve generalization of classification models, directly employing it to 3DGS is suboptimal due to the discrepancy between the tasks. Specifically, it hinders reconstructing high-frequency details due to excessive regularization, while reducing its strength leads to under-penalizing sharpness. To address this, we reflect the local frequency of images to set the regularization weight and the neighborhood radius when estimating the local sharpness. It prevents floater artifacts in novel viewpoints and reconstructs fine details that SAM tends to oversmooth. Across datasets with various configurations, our method consistently improves a wide range of baselines. Code will be available at this https URL.

顶级标签: computer vision model training machine learning
详细标签: 3d reconstruction novel view synthesis sharpness regularization gaussian splatting few-shot learning 或 搜索:

📄 论文总结

频率自适应锐度正则化:提升3D高斯泼溅泛化能力 / Frequency-Adaptive Sharpness Regularization for Improving 3D Gaussian Splatting Generalization


1️⃣ 一句话总结

这项研究提出了一种频率自适应锐度正则化方法,通过动态调整正则化强度来防止3D高斯泼溅技术在稀疏视角下过拟合,从而在保留高频细节的同时有效提升新视角合成的泛化能力。


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