Parking occupancy prediction (POP) plays a vital role in many parking-related smart services for better parking management. However, an issue hinders its mass deployment: many parking facilities cannot collect enough data to feed data-hungry machine learning models. To tackle the challenges in small-sample POP, we propose an approach named Adaptation and Learning to Learn (ALL) by adopting the capability of advanced deep learning and federated learning. ALL integrates two novel ideas: (1) Adaptation: by leveraging the Asynchronous Advantage Actor-Critic (A3C) reinforcement learning technique, an auto-selector module is implemented, which can group and select data-scarce parks automatically as supporting sources to enable the knowledge adapt...
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...
Traffic congestion is a severe problem in urban areas and it leads to the emission of greenhouse gas...
Searching for a free parking space can lead to traffic congestion, increasing fuel consumption, and ...
# Meta TSD-GRU is proposed for near real-time parking occupancy prediction on the city scale. Abstr...
International audienceMachine/Deep Learning (ML/DL) techniques have been applied to large data sets ...
The accurate and timely information about parking occupancy and availability has played a crucial ro...
Cruising for parking in city centers is a problem for many motorists and for communities that need t...
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 ...
Public road authorities and private mobility service providers need information on and derived from ...
Precise prediction on vacant parking space (VPS) information plays a vital role in intelligent trans...
The logistics industry faces an increasing shortage of truck parking spots. This results in illegal ...
The parking of cars is a globally recognized problem, especially at locations where there is a high ...
Parking issues have been receiving increasing attention. An accurate parking occupancy prediction is...
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...
Traffic congestion is a severe problem in urban areas and it leads to the emission of greenhouse gas...
Searching for a free parking space can lead to traffic congestion, increasing fuel consumption, and ...
# Meta TSD-GRU is proposed for near real-time parking occupancy prediction on the city scale. Abstr...
International audienceMachine/Deep Learning (ML/DL) techniques have been applied to large data sets ...
The accurate and timely information about parking occupancy and availability has played a crucial ro...
Cruising for parking in city centers is a problem for many motorists and for communities that need t...
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 ...
Public road authorities and private mobility service providers need information on and derived from ...
Precise prediction on vacant parking space (VPS) information plays a vital role in intelligent trans...
The logistics industry faces an increasing shortage of truck parking spots. This results in illegal ...
The parking of cars is a globally recognized problem, especially at locations where there is a high ...
Parking issues have been receiving increasing attention. An accurate parking occupancy prediction is...
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...
Traffic congestion is a severe problem in urban areas and it leads to the emission of greenhouse gas...