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Main Authors: Yu, Yue, Chen, Haibo, Chen, Shuo, Yang, Jian, Li, Jun
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.19554
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author Yu, Yue
Chen, Haibo
Chen, Shuo
Yang, Jian
Li, Jun
author_facet Yu, Yue
Chen, Haibo
Chen, Shuo
Yang, Jian
Li, Jun
contents Instilling creativity in text-to-image (T2I) generation presents a significant challenge, as it requires synthesized images to exhibit not only visual novelty and surprise, but also artistic value. Current T2I models, however, are largely optimized for literal text-image alignment with their data distribution, and their noise prediction networks constrain the generation to high-probability regions, consequently generating outputs that lack authentic creativity. To address this, we propose a Self-Creative Diffusion (SCDiff) model for meaningful T2I generations featuring two core modules: a learnable spatial weighting (LSW) module and a visual-semantic mixing loss (VSML). The LSW module designs a parametric Kaiser-Bessel window to reinforce central image features, fostering novel and surprising generation. The VSML module introduces a dual loss function: a similarity loss constrains that the new images align with its textual description, while a diversity loss maximizes its distinction from the original image, enhancing both semantic value and visual novelty. Extensive experiments demonstrate that our model substantially improves creativity, semantic alignment, and visual coherence, offering a simple yet powerful framework for generating creative objects.
format Preprint
id arxiv_https___arxiv_org_abs_2605_19554
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Self-Creative Text-to-Object Generation using Semantic-Aware Spatial Weighting
Yu, Yue
Chen, Haibo
Chen, Shuo
Yang, Jian
Li, Jun
Computer Vision and Pattern Recognition
Instilling creativity in text-to-image (T2I) generation presents a significant challenge, as it requires synthesized images to exhibit not only visual novelty and surprise, but also artistic value. Current T2I models, however, are largely optimized for literal text-image alignment with their data distribution, and their noise prediction networks constrain the generation to high-probability regions, consequently generating outputs that lack authentic creativity. To address this, we propose a Self-Creative Diffusion (SCDiff) model for meaningful T2I generations featuring two core modules: a learnable spatial weighting (LSW) module and a visual-semantic mixing loss (VSML). The LSW module designs a parametric Kaiser-Bessel window to reinforce central image features, fostering novel and surprising generation. The VSML module introduces a dual loss function: a similarity loss constrains that the new images align with its textual description, while a diversity loss maximizes its distinction from the original image, enhancing both semantic value and visual novelty. Extensive experiments demonstrate that our model substantially improves creativity, semantic alignment, and visual coherence, offering a simple yet powerful framework for generating creative objects.
title Self-Creative Text-to-Object Generation using Semantic-Aware Spatial Weighting
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.19554