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Main Authors: Ahuja, Angad Singh, Anandh, Aarush Ram
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.17259
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author Ahuja, Angad Singh
Anandh, Aarush Ram
author_facet Ahuja, Angad Singh
Anandh, Aarush Ram
contents Precise color control remains a persistent failure mode in text-to-image diffusion systems, particularly in design-oriented workflows where outputs must satisfy explicit, user-specified color targets. We present an inference-time, region-constrained color preservation method that steers a pretrained diffusion model without any additional training. Our approach combines (i) ROI-based inpainting for spatial selectivity, (ii) background-latent re-imposition to prevent color drift outside the ROI, and (iii) latent nudging via gradient guidance using a composite loss defined in CIE Lab and linear RGB. The loss is constructed to control not only the mean ROI color but also the tail of the pixelwise error distribution through CVaR-style and soft-maximum penalties, with a late-start gate and a time-dependent schedule to stabilize guidance across denoising steps. We show that mean-only baselines can satisfy average color constraints while producing perceptually salient local failures, motivating our distribution-aware objective. The resulting method provides a practical, training-free mechanism for targeted color adherence that can be integrated into standard Stable Diffusion inpainting pipelines.
format Preprint
id arxiv_https___arxiv_org_abs_2601_17259
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Inference-Time Loss-Guided Colour Preservation in Diffusion Sampling
Ahuja, Angad Singh
Anandh, Aarush Ram
Computer Vision and Pattern Recognition
Graphics
Machine Learning
I.4, I.5, I.3, B.8
Precise color control remains a persistent failure mode in text-to-image diffusion systems, particularly in design-oriented workflows where outputs must satisfy explicit, user-specified color targets. We present an inference-time, region-constrained color preservation method that steers a pretrained diffusion model without any additional training. Our approach combines (i) ROI-based inpainting for spatial selectivity, (ii) background-latent re-imposition to prevent color drift outside the ROI, and (iii) latent nudging via gradient guidance using a composite loss defined in CIE Lab and linear RGB. The loss is constructed to control not only the mean ROI color but also the tail of the pixelwise error distribution through CVaR-style and soft-maximum penalties, with a late-start gate and a time-dependent schedule to stabilize guidance across denoising steps. We show that mean-only baselines can satisfy average color constraints while producing perceptually salient local failures, motivating our distribution-aware objective. The resulting method provides a practical, training-free mechanism for targeted color adherence that can be integrated into standard Stable Diffusion inpainting pipelines.
title Inference-Time Loss-Guided Colour Preservation in Diffusion Sampling
topic Computer Vision and Pattern Recognition
Graphics
Machine Learning
I.4, I.5, I.3, B.8
url https://arxiv.org/abs/2601.17259