A Diffusion Model Translator for Efficient Image-to-Image Translation.

Mengfei Xia, Yu Zhou, Ran Yi, Yong-Jin Liu, Wenping Wang
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Abstract

Applying diffusion models to image-to-image translation (I2I) has recently received increasing attention due to its practical applications. Previous attempts inject information from the source image into each denoising step for an iterative refinement, thus resulting in a time-consuming implementation. We propose an efficient method that equips a diffusion model with a lightweight translator, dubbed a Diffusion Model Translator (DMT), to accomplish I2I. Specifically, we first offer theoretical justification that in employing the pioneering DDPM work for the I2I task, it is both feasible and sufficient to transfer the distribution from one domain to another only at some intermediate step. We further observe that the translation performance highly depends on the chosen timestep for domain transfer, and therefore propose a practical strategy to automatically select an appropriate timestep for a given task. We evaluate our approach on a range of I2I applications, including image stylization, image colorization, segmentation to image, and sketch to image, to validate its efficacy and general utility. The comparisons show that our DMT surpasses existing methods in both quality and efficiency. Code will be made publicly available.

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用于高效图像到图像翻译的扩散模型翻译器
将扩散模型应用于图像到图像的转换(I2I),因其实际应用而受到越来越多的关注。以往的尝试是在每个去噪步骤中注入源图像信息,进行迭代改进,因此实施起来非常耗时。我们提出了一种高效的方法,为扩散模型配备一个轻量级翻译器,称为扩散模型翻译器(DMT),以实现 I2I。具体来说,我们首先从理论上证明,在将开创性的 DDPM 工作用于 I2I 任务时,仅在某个中间步骤将分布从一个域转移到另一个域既可行又充分。我们进一步观察到,翻译性能在很大程度上取决于所选择的域转移时间步,因此我们提出了一种实用策略,可为给定任务自动选择合适的时间步。我们在一系列 I2I 应用中评估了我们的方法,包括图像风格化、图像着色、图像分割和图像素描,以验证其有效性和通用性。比较结果表明,我们的 DMT 在质量和效率上都超过了现有方法。代码将公开发布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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