Modulating Pretrained Diffusion Models for Multimodal Image Synthesis

Cusuh Ham, James Hays, Jingwan Lu, Krishna Kumar Singh, Zhifei Zhang, T. Hinz
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引用次数: 9

Abstract

We present multimodal conditioning modules (MCM) for enabling conditional image synthesis using pretrained diffusion models. Previous multimodal synthesis works rely on training networks from scratch or fine-tuning pretrained networks, both of which are computationally expensive for large, state-of-the-art diffusion models. Our method uses pretrained networks but does not require any updates to the diffusion network’s parameters. MCM is a small module trained to modulate the diffusion network’s predictions during sampling using 2D modalities (e.g., semantic segmentation maps, sketches) that were unseen during the original training of the diffusion model. We show that MCM enables user control over the spatial layout of the image and leads to increased control over the image generation process. Training MCM is cheap as it does not require gradients from the original diffusion net, consists of only ∼ 1% of the number of parameters of the base diffusion model, and is trained using only a limited number of training examples. We evaluate our method on unconditional and text-conditional models to demonstrate the improved control over the generated images and their alignment with respect to the conditioning inputs.
调制多模态图像合成的预训练扩散模型
我们提出了使用预训练扩散模型实现条件图像合成的多模态条件反射模块(MCM)。以前的多模态综合工作依赖于从零开始的训练网络或微调预训练网络,对于大型的、最先进的扩散模型来说,这两种方法在计算上都很昂贵。我们的方法使用预训练网络,但不需要对扩散网络的参数进行任何更新。MCM是一个小模块,用于在采样期间使用2D模式(例如,语义分割图,草图)调制扩散网络的预测,这些模式在扩散模型的原始训练期间是看不见的。我们展示了MCM使用户能够控制图像的空间布局,并增加了对图像生成过程的控制。训练MCM很便宜,因为它不需要原始扩散网络的梯度,只包含基本扩散模型参数数量的~ 1%,并且只使用有限数量的训练样例进行训练。我们在无条件和文本条件模型上评估了我们的方法,以证明对生成图像的改进控制及其相对于条件输入的对齐。
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