Conceptos Básicos
Introducing a novel inclusion matching pipeline for animation paint bucket colorization, addressing challenges of segment matching and achieving superior results in complex scenarios.
Estadísticas
Our method surpasses AnT (Cadmium) and RAFT in challenging scenarios.
PaintBucket-Character dataset includes 11,345 training images and 3,200 test images.
Training iterations: 300,000, batch size: 2, learning rate: 10^-4.
Model includes coarse color warping module, inclusion matching module, and feature extraction network.
Citas
"Our method features a two-stage pipeline that integrates a coarse color warping module with an inclusion matching module."
"Our experiments demonstrate the effectiveness and superiority of our method over existing techniques."