计算机科学
修补
人工智能
图像(数学)
任务(项目管理)
图像翻译
翻译(生物学)
协议(科学)
特征(语言学)
JPEG格式
图像质量
样品(材料)
机器学习
模式识别(心理学)
计算机视觉
医学
生物化学
化学
语言学
替代医学
哲学
管理
病理
色谱法
信使核糖核酸
经济
基因
作者
Chitwan Saharia,William Chan,Huiwen Chang,Chris Lee,Jonathan Ho,Tim Salimans,David J. Fleet,Mohammad Norouzi
标识
DOI:10.1145/3528233.3530757
摘要
This paper develops a unified framework for image-to-image translation based on conditional diffusion models and evaluates this framework on four challenging image-to-image translation tasks, namely colorization, inpainting, uncropping, and JPEG restoration. Our simple implementation of image-to-image diffusion models outperforms strong GAN and regression baselines on all tasks, without task-specific hyper-parameter tuning, architecture customization, or any auxiliary loss or sophisticated new techniques needed. We uncover the impact of an L2 vs. L1 loss in the denoising diffusion objective on sample diversity, and demonstrate the importance of self-attention in the neural architecture through empirical studies. Importantly, we advocate a unified evaluation protocol based on ImageNet, with human evaluation and sample quality scores (FID, Inception Score, Classification Accuracy of a pre-trained ResNet-50, and Perceptual Distance against original images). We expect this standardized evaluation protocol to play a role in advancing image-to-image translation research. Finally, we show that a generalist, multi-task diffusion model performs as well or better than task-specific specialist counterparts. Check out https://diffusion-palette.github.io/ for an overview of the results and code.
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