The content introduces a novel method, GPJA, for facial mesh registration that combines geometry and photometric alignment. It addresses challenges in deformation guidance, topological artifacts, and maintaining photometric consistency. Experimental results show superior performance compared to conventional methods like ICP-based techniques and deep learning approaches.
The paper discusses the importance of differentiable rendering in achieving joint alignment in geometry and photometric appearances. It highlights the use of holistic rendering alignment with color, depth, and surface normals constraints to guide deformation accurately. The multiscale regularized optimization ensures high-quality aligned meshes with efficient convergence.
Ablation studies confirm the significance of each constraint from the holistic rendering alignment mechanism. The normal constraint enhances details while masking out the inner mouth aids in avoiding disturbances around contours. Results demonstrate improved geometric accuracy and pixel-level photometric alignment across various facial expressions.
The content concludes by discussing limitations related to small features like moles and freckles impacting deformation accuracy. Future research directions include exploring multi-view video sequences and refining rendering functions for more complex effects.
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by Xizhi Wang,Y... a las arxiv.org 03-06-2024
https://arxiv.org/pdf/2403.02629.pdfConsultas más profundas