학술논문

Two-Stream Networks for Lane-Change Prediction of Surrounding Vehicles
Document Type
Conference
Source
2020 IEEE 23rd International Conference on Intelligent Transportation Systems (ITSC) Intelligent Transportation Systems (ITSC), 2020 IEEE 23rd International Conference on. :1-6 Sep, 2020
Subject
Transportation
Visualization
Streaming media
Spatiotemporal phenomena
Cameras
Vehicles
Roads
Feature extraction
Language
Abstract
In highway scenarios, an alert human driver will typically anticipate early cut-in and cut-out maneuvers of surrounding vehicles using only visual cues. An automated system must anticipate these situations at an early stage too, to increase the safety and the efficiency of its performance. To deal with lane-change recognition and prediction of surrounding vehicles, we pose the problem as an action recognition/prediction problem by stacking visual cues from video cameras. Two video action recognition approaches are analyzed: two-stream convolutional networks and spatiotemporal multiplier networks. Different sizes of the regions around the vehicles are analyzed, evaluating the importance of the interaction between vehicles and the context information in the performance. In addition, different prediction horizons are evaluated. The obtained results demonstrate the potential of these methodologies to serve as robust predictors of future lane-changes of surrounding vehicles in time horizons between 1 and 2 seconds.