Continual few-shot patch-based learning for anime-style colorization
Akinobu Maejima,
Seitaro Shinagawa,
Hiroyuki Kubo
et al.
Abstract:The automatic colorization of anime line drawings is a challenging problem in production pipelines. Recent advances in deep neural networks have addressed this problem; however, collectingmany images of colorization targets in novel anime work before the colorization process starts leads to chicken-and-egg problems and has become an obstacle to using them in production pipelines. To overcome this obstacle, we propose a new patch-based learning method for few-shot anime-style colorization. The learning method a… Show more
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