Deep Learning for On-Street Parking Violation Prediction
Thien Nhan Vo

TL;DR
This paper presents a deep learning approach to predict on-street parking violations with high accuracy, addressing data noise and missing data issues, to improve parking information systems in cities.
Contribution
It introduces a novel deep learning model combined with data augmentation and smoothing techniques for fine-grained parking violation prediction.
Findings
Accurately predicts parking violations using real city data.
Improves prediction accuracy with data augmentation and smoothing.
Demonstrates effectiveness in Thessaloniki, Greece.
Abstract
Illegal parking along with the lack of available parking spaces are among the biggest issues faced in many large cities. These issues can have a significant impact on the quality of life of citizens. On-street parking systems have been designed to this end aiming at ensuring that parking spaces will be available for the local population, while also providing easy access to parking for people visiting the city center. However, these systems are often affected by illegal parking, providing incorrect information regarding the availability of parking spaces. Even though this can be mitigated using sensors for detecting the presence of cars in various parking sectors, the cost of these implementations is usually prohibiting large. In this paper, we investigate an indirect way of predicting parking violations at a fine-grained level, equipping such parking systems with a valuable tool for…
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Taxonomy
TopicsSmart Parking Systems Research · Infrastructure Maintenance and Monitoring · Vehicle License Plate Recognition
