研究目的
To develop a workflow for accurate spectral reproduction of paintings that is invariant to illumination, using multi-material 3D printing with custom inks and neural networks for bidirectional mapping between spectral reflectance and ink stack layouts.
研究成果
The proposed workflow achieves high-fidelity spectral reproduction of paintings using 3D printing and neural networks, outperforming existing methods in accuracy and efficiency. The spectral vector error diffusion effectively handles discretization and quantization. Future work should focus on expanding the ink library, incorporating additional appearance attributes, and improving physical models.
研究不足
The ink library is suboptimal for reproducing certain spectral curve shapes (e.g., cobalt blue), and the method does not incorporate gloss, translucency, or 3D brush-stroke trails. Physical modeling scalability is limited, and there is a need for expanded ink selection and improved blur reduction.
1:Experimental Design and Method Selection:
The workflow involves spectral acquisition of paintings, printing with custom inks, and data-driven modeling using neural networks for spectral prediction and layout optimization. A spectral vector error diffusion algorithm is used for halftoning and discretization.
2:Sample Selection and Data Sources:
A dataset of 20,878 contone ink stack spectra and layouts is created, including printed samples and spectrally captured oil paintings. Historical pigments from the FORS spectral database are used for evaluation.
3:List of Experimental Equipment and Materials:
A MultiFab 3D printer with 11 custom inks (including CMYK, red, green, blue, orange, violet, transparent white, opaque white), a Nuance FX multispectral imaging system with a Coastal Optical 60 mm lens, ROSCO LED LitePads, and various pigments from brands like BASF, Lansco, Penncolor.
4:Experimental Procedures and Operational Workflow:
Paintings are scanned spectrally, ink stacks are printed and measured, neural networks are trained on the dataset, and reproductions are printed and evaluated under different illuminants.
5:Data Analysis Methods:
Spectral error (Euclidean distance), colorimetric error (CIEDE2000), and perceptual loss are used for evaluation, with statistical analysis of mean, standard deviation, median, and maximum errors.
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