Visual Parking Occupancy Detection Using Extended Contextual Image Information via a Multi-Branch Output ConvNeXt Network

Author:

Encío Leyre1ORCID,Díaz César1ORCID,del-Blanco Carlos R.1ORCID,Jaureguizar Fernando1ORCID,García Narciso1ORCID

Affiliation:

1. Grupo de Tratamiento de Imágenes (GTI), Information Processing and Telecommunications Center, Universidad Politécnica de Madrid, 28040 Madrid, Spain

Abstract

Along with society’s development, transportation has become a key factor in human daily life, increasing the number of vehicles on the streets. Consequently, the task of finding free parking slots in metropolitan areas can be dramatically challenging, increasing the chance of getting involved in an accident and the carbon footprint, and negatively affecting the driver’s health. Therefore, technological resources to deal with parking management and real-time monitoring have become key players in this scenario to speed up the parking process in urban areas. This work proposes a new computer-vision-based system that detects vacant parking spaces in challenging situations using color imagery processed by a novel deep-learning algorithm. This is based on a multi-branch output neural network that maximizes the contextual image information to infer the occupancy of every parking space. Every output infers the occupancy of a specific parking slot using all the input image information, unlike existing approaches, which only use a neighborhood around every slot. This allows it to be very robust to changing illumination conditions, different camera perspectives, and mutual occlusions between parked cars. An extensive evaluation has been performed using several public datasets, proving that the proposed system outperforms existing approaches.

Funder

Spanish Government

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference39 articles.

1. Dirección General de Carreteras (2021). Estudio de la Intensidad Media Diaria de Vehículos (IMD), Ministerio de Transportes, Movilidad y Agenda Urbana. Technical Report.

2. Ma, Y., Liu, Y., Zhang, L., Cao, Y., Guo, S., and Li, H. (2021). Research Review on Parking Space Detection Method. Symmetry, 13.

3. Searching for Street Parking: Effects on Driver Vehicle Control, Workload, Physiology, and Glances;Ponnambalam;Front. Psychol.,2020

4. (2023, March 03). People Spend 17 Hours a Year Looking for a Parking Space. Available online: https://www.parking.net/parking-industry-blog/parking-network/eight-surprising-facts-about-parking.

5. (2023, March 03). City Parking Solutions Throughout the Time. Available online: https://www.nwave.io/city-parking-solutions/.

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