PiCo: Enhancing Text-Image Alignment with Improved Noise Selection and Precise Mask Control in Diffusion Models
Journal:
arXiv
Published Date:
May 6, 2025
Abstract
Advanced diffusion models have made notable progress in text-to-image
compositional generation. However, it is still a challenge for existing models
to achieve text-image alignment when confronted with complex text prompts. In
this work, we highlight two factors that affect this alignment: the quality of
the randomly initialized noise and the reliability of the generated controlling
mask. We then propose PiCo (Pick-and-Control), a novel training-free approach
with two key components to tackle these two factors. First, we develop a noise
selection module to assess the quality of the random noise and determine
whether the noise is suitable for the target text. A fast sampling strategy is
utilized to ensure efficiency in the noise selection stage. Second, we
introduce a referring mask module to generate pixel-level masks and to
precisely modulate the cross-attention maps. The referring mask is applied to
the standard diffusion process to guide the reasonable interaction between text
and image features. Extensive experiments have been conducted to verify the
effectiveness of PiCo in liberating users from the tedious process of random
generation and in enhancing the text-image alignment for diverse text
descriptions.