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📄 Abstract
Abstract: Sparse-view 3D Gaussian Splatting (3DGS) presents significant challenges in
reconstructing high-quality novel views, as it often overfits to the
widely-varying high-frequency (HF) details of the sparse training views. While
frequency regularization can be a promising approach, its typical reliance on
Fourier transforms causes difficult parameter tuning and biases towards
detrimental HF learning. We propose DWTGS, a framework that rethinks frequency
regularization by leveraging wavelet-space losses that provide additional
spatial supervision. Specifically, we supervise only the low-frequency (LF) LL
subbands at multiple DWT levels, while enforcing sparsity on the HF HH subband
in a self-supervised manner. Experiments across benchmarks show that DWTGS
consistently outperforms Fourier-based counterparts, as this LF-centric
strategy improves generalization and reduces HF hallucinations.