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Main Authors: Sukanto, Sudipto Das, Roy, Diponker, Shakil, Fahim, Singha, Nirjhar, Asik, Abdullah, Joarder, Aniket, Fuad, Mridha Md Nafis, Ibrahim, Muhammad
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.26154
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author Sukanto, Sudipto Das
Roy, Diponker
Shakil, Fahim
Singha, Nirjhar
Asik, Abdullah
Joarder, Aniket
Fuad, Mridha Md Nafis
Ibrahim, Muhammad
author_facet Sukanto, Sudipto Das
Roy, Diponker
Shakil, Fahim
Singha, Nirjhar
Asik, Abdullah
Joarder, Aniket
Fuad, Mridha Md Nafis
Ibrahim, Muhammad
contents Modes of transportation vary across countries depending on geographical location and cultural context. In South Asian countries rickshaws are among the most common means of local transport. Based on their mode of operation, rickshaws in cities across Bangladesh can be broadly classified into non-auto (pedal-powered) and auto-rickshaws (motorized). Monitoring the movement of auto-rickshaws is necessary as traffic rules often restrict auto-rickshaws from accessing certain routes. However, existing surveillance systems make it quite difficult to monitor them due to their similarity to other vehicles, especially non-auto rickshaws whereas manual video analysis is too time-consuming. This paper presents a machine learning-based approach to automatically detect auto-rickshaws in traffic images. In this system, we used real-time object detection using the YOLOv8 model. For training purposes, we prepared a set of 1,730 annotated images that were captured under various traffic conditions. The results show that our proposed model performs well in real-time auto-rickshaw detection and offers an mAP50 of 83.447% and binary precision and recall values above 78%, demonstrating its effectiveness in handling both dense and sparse traffic scenarios. The dataset has been publicly released for further research.
format Preprint
id arxiv_https___arxiv_org_abs_2510_26154
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Detecting Unauthorized Vehicles using Deep Learning for Smart Cities: A Case Study on Bangladesh
Sukanto, Sudipto Das
Roy, Diponker
Shakil, Fahim
Singha, Nirjhar
Asik, Abdullah
Joarder, Aniket
Fuad, Mridha Md Nafis
Ibrahim, Muhammad
Computer Vision and Pattern Recognition
Modes of transportation vary across countries depending on geographical location and cultural context. In South Asian countries rickshaws are among the most common means of local transport. Based on their mode of operation, rickshaws in cities across Bangladesh can be broadly classified into non-auto (pedal-powered) and auto-rickshaws (motorized). Monitoring the movement of auto-rickshaws is necessary as traffic rules often restrict auto-rickshaws from accessing certain routes. However, existing surveillance systems make it quite difficult to monitor them due to their similarity to other vehicles, especially non-auto rickshaws whereas manual video analysis is too time-consuming. This paper presents a machine learning-based approach to automatically detect auto-rickshaws in traffic images. In this system, we used real-time object detection using the YOLOv8 model. For training purposes, we prepared a set of 1,730 annotated images that were captured under various traffic conditions. The results show that our proposed model performs well in real-time auto-rickshaw detection and offers an mAP50 of 83.447% and binary precision and recall values above 78%, demonstrating its effectiveness in handling both dense and sparse traffic scenarios. The dataset has been publicly released for further research.
title Detecting Unauthorized Vehicles using Deep Learning for Smart Cities: A Case Study on Bangladesh
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.26154