GazeFusion: Saliency-Guided Image Generation
This addresses the need for attention-controllable image generation in practical applications like design and display adaptation, representing an incremental improvement over existing layout control methods.
The paper tackles the problem of controlling where viewers pay attention in images generated by diffusion models, and demonstrates that their saliency-guided framework successfully aligns generated images with user-specified attention distributions, as evidenced by eye-tracked user studies and model-based analyses.
Diffusion models offer unprecedented image generation power given just a text prompt. While emerging approaches for controlling diffusion models have enabled users to specify the desired spatial layouts of the generated content, they cannot predict or control where viewers will pay more attention due to the complexity of human vision. Recognizing the significance of attention-controllable image generation in practical applications, we present a saliency-guided framework to incorporate the data priors of human visual attention mechanisms into the generation process. Given a user-specified viewer attention distribution, our control module conditions a diffusion model to generate images that attract viewers' attention toward the desired regions. To assess the efficacy of our approach, we performed an eye-tracked user study and a large-scale model-based saliency analysis. The results evidence that both the cross-user eye gaze distributions and the saliency models' predictions align with the desired attention distributions. Lastly, we outline several applications, including interactive design of saliency guidance, attention suppression in unwanted regions, and adaptive generation for varied display/viewing conditions.