In light of growing urban traffic, car parking becomes increasingly critical for cities to manage. As a result, the prediction of parking occupancy has sparked significant research interest in recent years. While many external data sources have been considered in the prediction models, the underlying geographic context has mostly been ignored. Thus, in order to study the contribution of geospatial information to parking occupancy prediction models, road network centrality, land use, and Point of Interest (POI) data were incorporated in Random Forest (RF) and Artificial Neural Network (ANN, specifically Feedforward Neural Network FFNN) prediction models in this work. Model performances were compared to a baseline, which only considers histor...
Recent developments in the field of parking can be enhanced with smart city alternatives. One of the...
With the development of sensors and of the Internet of Things (IoT), smart cities can provide people...
International audienceMachine/Deep Learning (ML/DL) techniques have been applied to large data sets ...
In light of growing urban traffic, car parking becomes increasingly critical for cities to manage. A...
In light of growing urban traffic, car parking becomes increasingly critical for cities to manage. A...
Public road authorities and private mobility service providers need information on and derived from ...
Searching for a free parking space can lead to traffic congestion, increasing fuel consumption, and ...
Parking is an essential part of transportation systems and urban planning, but the availability of d...
Nowadays, the anticipation of parking-space demand is an instrumental service in order to reduce tra...
Management of parking systems is a challenge considering the substantial growth of parking demand an...
With the developing world, cities have begun to become smarter. Smart parking systems, with the ever...
In this paper, we present a comparative analysis of Statistical, Machine Learning and Deep Learning ...
The accurate and timely information about parking occupancy and availability has played a crucial ro...
Traffic congestion is a severe problem in urban areas and it leads to the emission of greenhouse gas...
Part 3: Neural NetworksInternational audienceIn China, more and more families own cars, and parking ...
Recent developments in the field of parking can be enhanced with smart city alternatives. One of the...
With the development of sensors and of the Internet of Things (IoT), smart cities can provide people...
International audienceMachine/Deep Learning (ML/DL) techniques have been applied to large data sets ...
In light of growing urban traffic, car parking becomes increasingly critical for cities to manage. A...
In light of growing urban traffic, car parking becomes increasingly critical for cities to manage. A...
Public road authorities and private mobility service providers need information on and derived from ...
Searching for a free parking space can lead to traffic congestion, increasing fuel consumption, and ...
Parking is an essential part of transportation systems and urban planning, but the availability of d...
Nowadays, the anticipation of parking-space demand is an instrumental service in order to reduce tra...
Management of parking systems is a challenge considering the substantial growth of parking demand an...
With the developing world, cities have begun to become smarter. Smart parking systems, with the ever...
In this paper, we present a comparative analysis of Statistical, Machine Learning and Deep Learning ...
The accurate and timely information about parking occupancy and availability has played a crucial ro...
Traffic congestion is a severe problem in urban areas and it leads to the emission of greenhouse gas...
Part 3: Neural NetworksInternational audienceIn China, more and more families own cars, and parking ...
Recent developments in the field of parking can be enhanced with smart city alternatives. One of the...
With the development of sensors and of the Internet of Things (IoT), smart cities can provide people...
International audienceMachine/Deep Learning (ML/DL) techniques have been applied to large data sets ...