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Auteurs principaux: Messai, Oussama, Zein-Eddine, Abbass, Bentamou, Abdelouahid, Picq, Mickaël, Duquesne, Nicolas, Puydarrieux, Stéphane, Gavet, Yann
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2509.01332
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author Messai, Oussama
Zein-Eddine, Abbass
Bentamou, Abdelouahid
Picq, Mickaël
Duquesne, Nicolas
Puydarrieux, Stéphane
Gavet, Yann
author_facet Messai, Oussama
Zein-Eddine, Abbass
Bentamou, Abdelouahid
Picq, Mickaël
Duquesne, Nicolas
Puydarrieux, Stéphane
Gavet, Yann
contents This paper tackles two key challenges: detecting small, dense, and overlapping objects (a major hurdle in computer vision) and improving the quality of noisy images, especially those encountered in industrial environments. [1, 2]. Our focus is on evaluating methods built on supervised deep learning. We perform an analysis of these methods, using a newly developed dataset comprising over 10k images and 120k instances. By evaluating their performance, accuracy, and computational efficiency, we identify the most reliable detection systems and highlight the specific challenges they address in industrial applications. This paper also examines the use of deep learning models to improve image quality in noisy industrial environments. We introduce a lightweight model based on a fully connected convolutional network. Additionally, we suggest potential future directions for further enhancing the effectiveness of the model. The repository of the dataset and proposed model can be found at: https://github.com/o-messai/SDOOD, https://github.com/o-messai/DDSRNet
format Preprint
id arxiv_https___arxiv_org_abs_2509_01332
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Image Quality Enhancement and Detection of Small and Dense Objects in Industrial Recycling Processes
Messai, Oussama
Zein-Eddine, Abbass
Bentamou, Abdelouahid
Picq, Mickaël
Duquesne, Nicolas
Puydarrieux, Stéphane
Gavet, Yann
Computer Vision and Pattern Recognition
Image and Video Processing
This paper tackles two key challenges: detecting small, dense, and overlapping objects (a major hurdle in computer vision) and improving the quality of noisy images, especially those encountered in industrial environments. [1, 2]. Our focus is on evaluating methods built on supervised deep learning. We perform an analysis of these methods, using a newly developed dataset comprising over 10k images and 120k instances. By evaluating their performance, accuracy, and computational efficiency, we identify the most reliable detection systems and highlight the specific challenges they address in industrial applications. This paper also examines the use of deep learning models to improve image quality in noisy industrial environments. We introduce a lightweight model based on a fully connected convolutional network. Additionally, we suggest potential future directions for further enhancing the effectiveness of the model. The repository of the dataset and proposed model can be found at: https://github.com/o-messai/SDOOD, https://github.com/o-messai/DDSRNet
title Image Quality Enhancement and Detection of Small and Dense Objects in Industrial Recycling Processes
topic Computer Vision and Pattern Recognition
Image and Video Processing
url https://arxiv.org/abs/2509.01332