Title
Providing More Regular Road Signs Infrastructure Updates For Connected Driving: A Crowdsourced Approach With Clustering And Confidence Level
Abstract
Road signs, such as traffic signs, traffic lights or pavement markings, are essential elements for the regulation of driving. Sensors embedded in vehicles (e.g., cameras) are increasingly able to detect them to provide near real-time assistance to the driver, with features such as the current speed limitation at any moment. When sensors are not able to detect road signs (e.g., because of bad weather conditions or obstructions on the road), these features usually rely on in-vehicle digital map layers. However, in-vehicle digital maps are not often up-to-date because their update cycles from map providers are often lengthy (at the scale of several months). For example, a new speed limitation on a road can sometimes take months to be reflected in the vehicle's digital map. To solve this problem, a crowdsourced process that can be used to provide more regular in-vehicle digital map updates (on an hourly or daily basis, for example) is proposed. In this paper, we focus on a crucial step in this process that consists of tracking road sign infrastructure changes by incrementally consolidating crowdsourced cameras' detections of road signs and computing the real positions of the signs, while removing noise due to the imprecision of GPS positions in addition to false positive and false negative detections. This goal is achieved by using non-supervised geospatial clustering techniques and Bayesian probabilities to compute existence probabilities for road signs over time. Overall, this computation is performed in a big data context while also addressing security, privacy, safety and scalability issues. As a proof of concept, two experiments are conducted with true field data and they clearly demonstrate the relevance of the proposed approach. The method or the platform can be useful for many market players such as car manufacturers, map providers, or GPS providers (including navigation software providers) to provide more frequent map updates, to make connected driving easier and safer. It can also be useful for road infrastructure maintenance by helping to identify mad signs that are poorly positioned or are not very visible.
Year
DOI
Venue
2021
10.1016/j.dss.2020.113443
DECISION SUPPORT SYSTEMS
Keywords
DocType
Volume
Road signs, Connected driving, Crowdsourcing, Big data, Clustering, Bayesian probabilities, Intelligent transportation systems
Journal
141
ISSN
Citations 
PageRank 
0167-9236
0
0.34
References 
Authors
0
4
Name
Order
Citations
PageRank
Dieudonné Tchuente1213.95
Dominik Senninger200.34
Holger Pietsch300.34
Danilo Gasdzik400.34