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Autores principales: Dong, Rongjun, Chen, Xin, Alexander, Morgan R, Sivakumar, Karthikeyan, Omdivar, Reza, Winkler, David A, Figueredo, Grazziela
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2603.28776
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author Dong, Rongjun
Chen, Xin
Alexander, Morgan R
Sivakumar, Karthikeyan
Omdivar, Reza
Winkler, David A
Figueredo, Grazziela
author_facet Dong, Rongjun
Chen, Xin
Alexander, Morgan R
Sivakumar, Karthikeyan
Omdivar, Reza
Winkler, David A
Figueredo, Grazziela
contents Learning to generate images with internally repeated and periodic structures poses a fundamental challenge for machine learning and computer vision models, which are typically optimised for local texture statistics and semantic realism rather than global structural consistency. This limitation is particularly pronounced in applications requiring strict control over repetition scale, spacing, and boundary coherence, such as microtopographical biomaterial surfaces. In this work, biomaterial design serves as a use case to study conditional generation of repeated patterns under weak supervision and class imbalance. We propose DF-ACBlurGAN, a structure-aware conditional generative adversarial network that explicitly reasons about long-range repetition during training. The approach integrates frequency-domain repetition scale estimation, scale-adaptive Gaussian blurring, and unit-cell reconstruction to balance sharp local features with stable global periodicity. Conditioning on experimentally derived biological response labels, the model synthesises designs aligned with target functional outcomes. Evaluation across multiple biomaterial datasets demonstrates improved repetition consistency and controllable structural variation compared to conventional generative approaches.
format Preprint
id arxiv_https___arxiv_org_abs_2603_28776
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle DF-ACBlurGAN: Structure-Aware Conditional Generation of Internally Repeated Patterns for Biomaterial Microtopography Design
Dong, Rongjun
Chen, Xin
Alexander, Morgan R
Sivakumar, Karthikeyan
Omdivar, Reza
Winkler, David A
Figueredo, Grazziela
Computer Vision and Pattern Recognition
Artificial Intelligence
Machine Learning
Learning to generate images with internally repeated and periodic structures poses a fundamental challenge for machine learning and computer vision models, which are typically optimised for local texture statistics and semantic realism rather than global structural consistency. This limitation is particularly pronounced in applications requiring strict control over repetition scale, spacing, and boundary coherence, such as microtopographical biomaterial surfaces. In this work, biomaterial design serves as a use case to study conditional generation of repeated patterns under weak supervision and class imbalance. We propose DF-ACBlurGAN, a structure-aware conditional generative adversarial network that explicitly reasons about long-range repetition during training. The approach integrates frequency-domain repetition scale estimation, scale-adaptive Gaussian blurring, and unit-cell reconstruction to balance sharp local features with stable global periodicity. Conditioning on experimentally derived biological response labels, the model synthesises designs aligned with target functional outcomes. Evaluation across multiple biomaterial datasets demonstrates improved repetition consistency and controllable structural variation compared to conventional generative approaches.
title DF-ACBlurGAN: Structure-Aware Conditional Generation of Internally Repeated Patterns for Biomaterial Microtopography Design
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2603.28776