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  4. Vehicle Detection in Overhead Satellite Images Using a One-Stage Object Detection Model
 
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Vehicle Detection in Overhead Satellite Images Using a One-Stage Object Detection Model

Journal
Sensors
Date Issued
2020
Author(s)
Stuparu, Delia-Georgiana
Ciobanu, Radu-Ioan
Dobre, Ciprian
DOI
10.3390/s20226485
Abstract
In order to improve the traffic in large cities and to avoid congestion, advanced methods of detecting and predicting vehicle behaviour are needed. Such methods require complex information regarding the number of vehicles on the roads, their positions, directions, etc. One way to obtain this information is by analyzing overhead images collected by satellites or drones, and extracting information from them through intelligent machine learning models. Thus, in this paper we propose and present a one-stage object detection model for finding vehicles in satellite images using the RetinaNet architecture and the Cars Overhead With Context dataset. By analyzing the results obtained by the proposed model, we show that it has a very good vehicle detection accuracy and a very low detection time, which shows that it can be employed to successfully extract data from real-time satellite or drone data.
Subjects

object detection mode...

satellite images

vehicle detection

smart city

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