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Main Authors: Pais, Valeria, Mendilaharzu, Malena, Faccio, Daniele, Oala, Luis, Clausen, Christoph, Sanguinetti, Bruno
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.22455
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author Pais, Valeria
Mendilaharzu, Malena
Faccio, Daniele
Oala, Luis
Clausen, Christoph
Sanguinetti, Bruno
author_facet Pais, Valeria
Mendilaharzu, Malena
Faccio, Daniele
Oala, Luis
Clausen, Christoph
Sanguinetti, Bruno
contents Real-world deployment of AI vision models is both fueled and limited by the data available for training and testing. Real datasets are sparse and uneven: long-tailed or unbalanced distributions hinder generalization, and the low number of samples in low density regions makes it hard to run evaluations. Synthetic data can fill these gaps, providing us with a way to sample the input space more continuously and improve data coverage for benchmarks. Focusing on the autonomous driving safety-critical case of pedestrian detection in the dark, we show how synthetic low-light samples can be used to better characterize the performance of a state-of-the-art object detection model as a function of the scene illumination. We use a synthetic RAW image augmentation technique to generate low-light samples that match the noise model of the camera sensor. Performance metrics on real and synthetic low-light data are similar, indicating that the AI model finds it hard to distinguish between them.
format Preprint
id arxiv_https___arxiv_org_abs_2605_22455
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Making the Discrete Continuous: Synthetic RAW Augmentations for Fine-Grained Evaluation of Person Detection Performance in Low Light
Pais, Valeria
Mendilaharzu, Malena
Faccio, Daniele
Oala, Luis
Clausen, Christoph
Sanguinetti, Bruno
Computer Vision and Pattern Recognition
Artificial Intelligence
Machine Learning
Optics
Real-world deployment of AI vision models is both fueled and limited by the data available for training and testing. Real datasets are sparse and uneven: long-tailed or unbalanced distributions hinder generalization, and the low number of samples in low density regions makes it hard to run evaluations. Synthetic data can fill these gaps, providing us with a way to sample the input space more continuously and improve data coverage for benchmarks. Focusing on the autonomous driving safety-critical case of pedestrian detection in the dark, we show how synthetic low-light samples can be used to better characterize the performance of a state-of-the-art object detection model as a function of the scene illumination. We use a synthetic RAW image augmentation technique to generate low-light samples that match the noise model of the camera sensor. Performance metrics on real and synthetic low-light data are similar, indicating that the AI model finds it hard to distinguish between them.
title Making the Discrete Continuous: Synthetic RAW Augmentations for Fine-Grained Evaluation of Person Detection Performance in Low Light
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Machine Learning
Optics
url https://arxiv.org/abs/2605.22455