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Autori principali: Fokkinga, Ella P., van Woerden, Jan Erik, Eker, Thijs A., Snel, Sebastiaan P., Hofmeijer, Elfi I. S., Schutte, Klamer, Heslinga, Friso G.
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2604.18076
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author Fokkinga, Ella P.
van Woerden, Jan Erik
Eker, Thijs A.
Snel, Sebastiaan P.
Hofmeijer, Elfi I. S.
Schutte, Klamer
Heslinga, Friso G.
author_facet Fokkinga, Ella P.
van Woerden, Jan Erik
Eker, Thijs A.
Snel, Sebastiaan P.
Hofmeijer, Elfi I. S.
Schutte, Klamer
Heslinga, Friso G.
contents Diffusion-based image synthesis has emerged as a promising source of synthetic training data for AI-based object detection and classification. In this work, we investigate whether images generated with diffusion can improve military vehicle detection under low-data conditions. We fine-tuned the text-to-image diffusion model FLUX.1 [dev] using LoRA with only 8 or 24 real images per class across 15 vehicle categories, resulting in class-specific diffusion models, which were used to generate new samples from automatically generated text prompts. The same real images were used to fine-tune the RF-DETR detector for a 15-class object detection task. Synthetic datasets generated by the diffusion models were then used to further improve detector performance. Importantly, no additional real data was required, as the generative models leveraged the same limited training samples. FLUX-generated images improved detection performance, particularly in the low-data regime (up to +8.0% mAP$_{50}$ with 8 real samples). To address the limited geometric control of text prompt-based diffusion, we additionally generated structurally guided synthetic data using ControlNet with Canny edge-map conditioning, yielding a FLUX-ControlNet (FLUX-CN) dataset with explicit control over viewpoint and pose. Structural guidance further enhanced performance when data is scarce (+4.1% mAP$_{50}$ with 8 real samples), but no additional benefit was observed when more real data is available. This study demonstrates that object-specific diffusion models are effective for improving military object detection in a low-data domain, and that structural guidance is most beneficial when real data is highly limited. These results highlight generative image data as an alternative to traditional simulation pipelines for the training of military AI systems.
format Preprint
id arxiv_https___arxiv_org_abs_2604_18076
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Class-specific diffusion models improve military object detection in a low-data domain
Fokkinga, Ella P.
van Woerden, Jan Erik
Eker, Thijs A.
Snel, Sebastiaan P.
Hofmeijer, Elfi I. S.
Schutte, Klamer
Heslinga, Friso G.
Computer Vision and Pattern Recognition
Artificial Intelligence
Diffusion-based image synthesis has emerged as a promising source of synthetic training data for AI-based object detection and classification. In this work, we investigate whether images generated with diffusion can improve military vehicle detection under low-data conditions. We fine-tuned the text-to-image diffusion model FLUX.1 [dev] using LoRA with only 8 or 24 real images per class across 15 vehicle categories, resulting in class-specific diffusion models, which were used to generate new samples from automatically generated text prompts. The same real images were used to fine-tune the RF-DETR detector for a 15-class object detection task. Synthetic datasets generated by the diffusion models were then used to further improve detector performance. Importantly, no additional real data was required, as the generative models leveraged the same limited training samples. FLUX-generated images improved detection performance, particularly in the low-data regime (up to +8.0% mAP$_{50}$ with 8 real samples). To address the limited geometric control of text prompt-based diffusion, we additionally generated structurally guided synthetic data using ControlNet with Canny edge-map conditioning, yielding a FLUX-ControlNet (FLUX-CN) dataset with explicit control over viewpoint and pose. Structural guidance further enhanced performance when data is scarce (+4.1% mAP$_{50}$ with 8 real samples), but no additional benefit was observed when more real data is available. This study demonstrates that object-specific diffusion models are effective for improving military object detection in a low-data domain, and that structural guidance is most beneficial when real data is highly limited. These results highlight generative image data as an alternative to traditional simulation pipelines for the training of military AI systems.
title Class-specific diffusion models improve military object detection in a low-data domain
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2604.18076