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Autori principali: Abubaker, Mohamad, Alsadder, Zubayda, Abdelhaq, Hamed, Boltes, Maik, Alia, Ahmed
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2411.18164
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author Abubaker, Mohamad
Alsadder, Zubayda
Abdelhaq, Hamed
Boltes, Maik
Alia, Ahmed
author_facet Abubaker, Mohamad
Alsadder, Zubayda
Abdelhaq, Hamed
Boltes, Maik
Alia, Ahmed
contents The automatic detection of pedestrian heads in crowded environments is essential for crowd analysis and management tasks, particularly in high-risk settings such as railway platforms and event entrances. These environments, characterized by dense crowds and dynamic movements, are underrepresented in public datasets, posing challenges for existing deep learning models. To address this gap, we introduce the Railway Platforms and Event Entrances-Heads (RPEE-Heads) dataset, a novel, diverse, high-resolution, and accurately annotated resource. It includes 109,913 annotated pedestrian heads across 1,886 images from 66 video recordings, with an average of 56.2 heads per image. Annotations include bounding boxes for visible head regions. In addition to introducing the RPEE-Heads dataset, this paper evaluates eight state-of-the-art object detection algorithms using the RPEE-Heads dataset and analyzes the impact of head size on detection accuracy. The experimental results show that You Only Look Once v9 and Real-Time Detection Transformer outperform the other algorithms, achieving mean average precisions of 90.7% and 90.8%, with inference times of 11 and 14 milliseconds, respectively. Moreover, the findings underscore the need for specialized datasets like RPEE-Heads for training and evaluating accurate models for head detection in railway platforms and event entrances. The dataset and pretrained models are available at https://doi.org/10.34735/ped.2024.2.
format Preprint
id arxiv_https___arxiv_org_abs_2411_18164
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle RPEE-HEADS: A Novel Benchmark for Pedestrian Head Detection in Crowd Videos
Abubaker, Mohamad
Alsadder, Zubayda
Abdelhaq, Hamed
Boltes, Maik
Alia, Ahmed
Computer Vision and Pattern Recognition
Machine Learning
The automatic detection of pedestrian heads in crowded environments is essential for crowd analysis and management tasks, particularly in high-risk settings such as railway platforms and event entrances. These environments, characterized by dense crowds and dynamic movements, are underrepresented in public datasets, posing challenges for existing deep learning models. To address this gap, we introduce the Railway Platforms and Event Entrances-Heads (RPEE-Heads) dataset, a novel, diverse, high-resolution, and accurately annotated resource. It includes 109,913 annotated pedestrian heads across 1,886 images from 66 video recordings, with an average of 56.2 heads per image. Annotations include bounding boxes for visible head regions. In addition to introducing the RPEE-Heads dataset, this paper evaluates eight state-of-the-art object detection algorithms using the RPEE-Heads dataset and analyzes the impact of head size on detection accuracy. The experimental results show that You Only Look Once v9 and Real-Time Detection Transformer outperform the other algorithms, achieving mean average precisions of 90.7% and 90.8%, with inference times of 11 and 14 milliseconds, respectively. Moreover, the findings underscore the need for specialized datasets like RPEE-Heads for training and evaluating accurate models for head detection in railway platforms and event entrances. The dataset and pretrained models are available at https://doi.org/10.34735/ped.2024.2.
title RPEE-HEADS: A Novel Benchmark for Pedestrian Head Detection in Crowd Videos
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2411.18164