Low-Cost Training of Image-to-Image Diffusion Models with Incremental Learning and Task/Domain Adaptation
Hector Antona,
Beatriz Otero,
Ruben Tous
Abstract:Diffusion models specialized in image-to-image translation tasks, like inpainting and colorization, have outperformed the state of the art, yet their computational requirements are exceptionally demanding. This study analyzes different strategies to train image-to-image diffusion models in a low-resource setting. The studied strategies include incremental learning and task/domain transfer learning. First, a base model for human face inpainting is trained from scratch with an incremental learning strategy. The … Show more
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