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Tracking Vehicle Cruising in an Open Parking Lot Using Deep Learning and Kalman Filter

Authors :
Paidi, Vijay
Fleyeh, Hasan
HÃ¥kansson, Johan
Nyberg, Roger G.
Source :
Journal of Advanced Transportation. August 24, 2021, Vol. 2021
Publication Year :
2021

Abstract

Due to the lack of wide availability of parking assisting applications, vehicles tend to cruise more than necessary to find an empty parking space. This problem is evident globally and the intensity of the problem varies based on the demand of parking spaces. It is a well-known hypothesis that the amount of cruising by a vehicle is dependent on the availability of parking spaces. However, the amount of cruising that takes place in search of parking spaces within a parking lot is not researched. This lack of research can be due to privacy and illumination concerns with suitable sensors like visual cameras. The use of thermal cameras offers an alternative to avoid privacy and illumination problems. Therefore, this paper aims to develop and demonstrate a methodology to detect and track the cruising patterns of multiple moving vehicles in an open parking lot. The vehicle is detected using Yolov3, modified Yolo, and custom Yolo deep learning architectures. The detected vehicles are tracked using Kalman filter and the trajectory of multiple vehicles is calculated on an image. The accuracy of modified Yolo achieved a positive detection rate of 91% while custom Yolo and Yolov3 achieved 83% and 75%, respectively. The performance of Kalman filter is dependent on the efficiency of the detector and the utilized Kalman filter facilitates maintaining data association during moving, stationary, and missed detection. Therefore, the use of deep learning algorithms and Kalman filter facilitates detecting and tracking multiple vehicles in an open parking lot.<br />Author(s): Vijay Paidi (corresponding author) [1]; Hasan Fleyeh [1]; Johan Håkansson [1]; Roger G. Nyberg [1] 1. Introduction Congestion and pollution from traffic are major problems in many urban areas. [...]

Details

Language :
English
ISSN :
01976729
Volume :
2021
Database :
Gale General OneFile
Journal :
Journal of Advanced Transportation
Publication Type :
Academic Journal
Accession number :
edsgcl.696871521
Full Text :
https://doi.org/10.1155/2021/1812647