MeshAnything V2 introduces Adjacent Mesh Tokenization (AMT), a novel method that significantly improves the efficiency and quality of artist-created mesh generation by representing faces with single vertices, resulting in more compact and well-structured token sequences for enhanced sequence learning.
A novel mesh tokenization method, Blocked and Patchified Tokenization (BPT), significantly compresses mesh data, enabling the training of mesh generation models on larger, more detailed datasets and leading to improved performance and robustness in mesh generation from point clouds and images.
A continuous representation for manifold polygonal meshes that can be optimized and learned to generate diverse mesh outputs.