_ | rider | _ |
Deep learning-based helmet wear analysis of a motorcycle | rider | for intelligent surveillance system |
Detecting, Tracking and Counting Motorcycle | rider | Traffic Violations on Unconstrained Roads |
Exploiting social relationships for free- | rider | s detection in minimum-delay P2P scalable video streaming |
Improved Framework using | rider | Optimization Algorithm for Precise Image Caption Generation |
IMU-Driven | rider | -on-Saddle Detection System for Electric-Power-Assisted Bicycles, An |
Intelligent intersection support for powered two-wheeled | rider | s: a human factors perspective |
Measuring Spatial Mismatch between Public Transit Services and Regular | rider | s: A Case Study of Beijing |
Methodological development of a specific tool for assessing acceptability of assistive systems of powered two-wheeler- | rider | s |
Modified | rider | Optimization-Based V Channel Magnification for Enhanced Video Super Resolution |
Night | rider | : Visual Odometry Using Headlights |
novel e-bike energy management for improvement of the | rider | metabolism, A |
Online Deep Reinforcement Learning-Based Order Recommendation Framework for | rider | -Centered Food Delivery System, An |
Participatory Urban Traffic Monitoring System: The Power of Bus | rider | s, A |
| rider | model identification: neural networks and quasi-LPV models |
Study on Horse- | rider | Interaction Based on Body Sensor Network in Competitive Equitation |
Utility-Based Matching of Vehicles and Hybrid Requests on | rider | Demand Responsive Systems |
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_ | ridership | _ |
Analysing the impact of weather on bus | ridership | using smart card data |
Analysing the relationship between weather, built environment, and public transport | ridership | |
Assessing the Effects of New Light Rail Transit on Regional Traffic Congestion and Transit | ridership | : A Synthetic Control Approach |
Bayesian models with spatial autocorrelation for bike sharing | ridership | variability based on revealed preference GPS trajectory data |
Correlation between Land Use Pattern and Urban Rail | ridership | Based on Bicycle-Sharing Trajectory |
Examining the Nonlinear Impacts of Origin-Destination Built Environment on Metro | ridership | at Station-to-Station Level |
Exploration of the spatiotemporal heterogeneity of metro | ridership | prompted by built environment: A multi-source fusion perspective |
Exploring the Spatiotemporal Effects of the Built Environment on the Nonlinear Impacts of Metro | ridership | : Evidence from Xi'an, China |
Graph Convolutional Stacked Bidirectional Unidirectional-LSTM Neural Network for Metro | ridership | Prediction, A |
Interactive Impacts of Built Environment Factors on Metro | ridership | Using GeoDetector: From the Perspective of TOD |
Neural Network Based on Spatial Decoupling and Patterns Diverging for Urban Rail Transit | ridership | Prediction, A |
Non-Linear Influence of Built Environment on the School Commuting Metro | ridership | : The Case in Wuhan, China, The |
Online Public Transit | ridership | Monitoring Through Passive WiFi Sensing |
PAG-TSN: | ridership | Demand Forecasting Model for Shared Travel Services of Smart Transportation |
Parallel Architecture of Convolutional Bi-Directional LSTM Neural Networks for Network-Wide Metro | ridership | Prediction |
Physical-Virtual Collaboration Modeling for Intra- and Inter-Station Metro | ridership | Prediction |
Revealing the Influence of the Fine-Scale Built Environment on Urban Rail | ridership | with a Semiparametric GWPR Model |
Spatiotemporal Influence of Urban Environment on Taxi | ridership | Using Geographically and Temporally Weighted Regression |
Spatiotemporal Varying Effects of Built Environment on Taxi and Ride-Hailing | ridership | in New York City |
Understanding evacuation and impact of a metro collision on | ridership | using large-scale mobile phone data |
Understanding Spatiotemporal Variations of | ridership | by Multiple Taxi Services |
Using an ARIMA-GARCH Modeling Approach to Improve Subway Short-Term | ridership | Forecasting Accounting for Dynamic Volatility |
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