2023
DOI: 10.3390/rs15194747
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Improved Deep Learning-Based Vehicle Detection for Urban Applications Using Remote Sensing Imagery

Mahmoud Ragab,
Hesham A. Abdushkour,
Adil O. Khadidos
et al.

Abstract: Remote sensing (RS) data can be attained from different sources, such as drones, satellites, aerial platforms, or street-level cameras. Each source has its own characteristics, including the spectral bands, spatial resolution, and temporal coverage, which may affect the performance of the vehicle detection algorithm. Vehicle detection for urban applications using remote sensing imagery (RSI) is a difficult but significant task with many real-time applications. Due to its potential in different sectors, includi… Show more

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Cited by 5 publications
(2 citation statements)
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“…The TF-YOLO detector [22] enhanced pedestrian detection with a novel transformer-fusion module. The IDLVD-UARSI technique [23] achieved high accuracy in vehicle detection using remote sensing imagery. In [24], the authors proposed a DL-based system for face recognition in CCTV images, aiming for high accuracy with minimal human oversight.…”
Section: Introductionmentioning
confidence: 99%
“…The TF-YOLO detector [22] enhanced pedestrian detection with a novel transformer-fusion module. The IDLVD-UARSI technique [23] achieved high accuracy in vehicle detection using remote sensing imagery. In [24], the authors proposed a DL-based system for face recognition in CCTV images, aiming for high accuracy with minimal human oversight.…”
Section: Introductionmentioning
confidence: 99%
“…Remote sensing analyses are less expensive in labor and time than field surveys and aerial photography, and they can be readily expanded to larger scales 16) . Remote Sensing techniques are widely used to monitor the environment and natural resources over extended periods 17,18) , for purposes such as land cover classification 19,20) , urban planning 21,22) , traffic monitoring 23,24) , and land cover change detection 25,26) . In many tropical regions, remote sensing is crucial to coastal monitoring because detailed estimates of changes in forest cover are necessary due to the effects these changes have on the environment and on sustainable development 27) .…”
Section: Introductionmentioning
confidence: 99%