SLTFILL: Spatial and Light Transformer For Multi-Reference Image inpainting
Yuliang Fan, Yue Zhou, Zonghao Yang, Zhenyu Tong
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This paper proposes a novel Nonlinear Orthogonal NMF model with Graph-based Total Variation regularization (GTV) for Multispectral document images decomposition. in this model, a GTV regularization is incorporated to preserve the intrinsic geometrical structure of document content lost by the vectorization of spectral images. A spatial orthogonality constraint over the Stiefel manifold is included to improve the sparsity of the solution and ensure its uniqueness. The kernel trick is involved to account for the non-linear correlation inherent to spectral data. We devised an efficient algorithm to solve the formulated problem using the Alternating Direction Method of Multipliers (ADMM). The experimental results on real-world data show that the proposed model achieves better decomposition performance than recent competitive methods and outperforms some traditional state-of-the-art methods.