Abstract:
Recoloring 3D models is a challenging task that often requires professional knowledge and tedious manual efforts. In this article, we present the first deep-learning fram...Show MoreMetadata
Abstract:
Recoloring 3D models is a challenging task that often requires professional knowledge and tedious manual efforts. In this article, we present the first deep-learning framework for exemplar-based 3D model recolor, which can automatically transfer the colors from a reference image to the 3D model texture. Our framework consists of two modules to solve two major challenges in the 3D color transfer. First, we propose a new feed-forward Color Transfer Network to achieve high-quality semantic-level color transfer by finding dense semantic correspondences between images. Second, considering 3D model constraints such as UV mapping, we design a novel 3D Texture Optimization Module which can generate a seamless and coherent texture by combining color transferred results rendered in multiple views. Experiments show that our method performs robustly and generalizes well to various kinds of models.
Published in: IEEE Transactions on Visualization and Computer Graphics ( Volume: 28, Issue: 8, 01 August 2022)