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Main Authors: Baig, Mirza Nihal, Hajong, Rony, Patwary, Mahdi Murshed, Rahman, Mohammad Shahidur, Chowdhury, Husne Ara
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.10659
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author Baig, Mirza Nihal
Hajong, Rony
Patwary, Mahdi Murshed
Rahman, Mohammad Shahidur
Chowdhury, Husne Ara
author_facet Baig, Mirza Nihal
Hajong, Rony
Patwary, Mahdi Murshed
Rahman, Mohammad Shahidur
Chowdhury, Husne Ara
contents We propose a comprehensive dataset for object detection in diverse driving environments across 9 districts in Bangladesh. The dataset, collected exclusively from smartphone cameras, provided a realistic representation of real-world scenarios, including day and night conditions. Most existing datasets lack suitable classes for autonomous navigation on Bangladeshi roads, making it challenging for researchers to develop models that can handle the intricacies of road scenarios. To address this issue, the authors proposed a new set of classes based on characteristics rather than local vehicle names. The dataset aims to encourage the development of models that can handle the unique challenges of Bangladeshi road scenarios for the effective deployment of autonomous vehicles. The dataset did not consist of any online images to simulate real-world conditions faced by autonomous vehicles. The classification of vehicles is challenging because of the diverse range of vehicles on Bangladeshi roads, including those not found elsewhere in the world. The proposed classification system is scalable and can accommodate future vehicles, making it a valuable resource for researchers in the autonomous vehicle sector.
format Preprint
id arxiv_https___arxiv_org_abs_2401_10659
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle BadODD: Bangladeshi Autonomous Driving Object Detection Dataset
Baig, Mirza Nihal
Hajong, Rony
Patwary, Mahdi Murshed
Rahman, Mohammad Shahidur
Chowdhury, Husne Ara
Computer Vision and Pattern Recognition
We propose a comprehensive dataset for object detection in diverse driving environments across 9 districts in Bangladesh. The dataset, collected exclusively from smartphone cameras, provided a realistic representation of real-world scenarios, including day and night conditions. Most existing datasets lack suitable classes for autonomous navigation on Bangladeshi roads, making it challenging for researchers to develop models that can handle the intricacies of road scenarios. To address this issue, the authors proposed a new set of classes based on characteristics rather than local vehicle names. The dataset aims to encourage the development of models that can handle the unique challenges of Bangladeshi road scenarios for the effective deployment of autonomous vehicles. The dataset did not consist of any online images to simulate real-world conditions faced by autonomous vehicles. The classification of vehicles is challenging because of the diverse range of vehicles on Bangladeshi roads, including those not found elsewhere in the world. The proposed classification system is scalable and can accommodate future vehicles, making it a valuable resource for researchers in the autonomous vehicle sector.
title BadODD: Bangladeshi Autonomous Driving Object Detection Dataset
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2401.10659