CVJun 30, 2023

Counting Guidance for High Fidelity Text-to-Image Synthesis

MIT
arXiv:2306.17567v324 citationsh-index: 19Has Code
Originality Incremental advance
AI Analysis

This addresses a specific fidelity issue in text-to-image synthesis for users requiring accurate object generation, but it is incremental as it builds on existing diffusion models.

The paper tackles the problem of text-to-image diffusion models generating incorrect numbers of objects as specified in prompts, and proposes a method using a counting network and attention map guidance to refine the denoising process, resulting in significantly enhanced fidelity in object count.

Recently, there have been significant improvements in the quality and performance of text-to-image generation, largely due to the impressive results attained by diffusion models. However, text-to-image diffusion models sometimes struggle to create high-fidelity content for the given input prompt. One specific issue is their difficulty in generating the precise number of objects specified in the text prompt. For example, when provided with the prompt "five apples and ten lemons on a table," images generated by diffusion models often contain an incorrect number of objects. In this paper, we present a method to improve diffusion models so that they accurately produce the correct object count based on the input prompt. We adopt a counting network that performs reference-less class-agnostic counting for any given image. We calculate the gradients of the counting network and refine the predicted noise for each step. To address the presence of multiple types of objects in the prompt, we utilize novel attention map guidance to obtain high-quality masks for each object. Finally, we guide the denoising process using the calculated gradients for each object. Through extensive experiments and evaluation, we demonstrate that the proposed method significantly enhances the fidelity of diffusion models with respect to object count. Code is available at https://github.com/furiosa-ai/counting-guidance.

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