Spatial-Temporal Feature Extraction and Evaluation Network for Citywide Traffic Condition Prediction

07/22/2022
by   Shilin Pu, et al.
0

Traffic prediction plays an important role in the realization of traffic control and scheduling tasks in intelligent transportation systems. With the diversification of data sources, reasonably using rich traffic data to model the complex spatial-temporal dependence and nonlinear characteristics in traffic flow are the key challenge for intelligent transportation system. In addition, clearly evaluating the importance of spatial-temporal features extracted from different data becomes a challenge. A Double Layer - Spatial Temporal Feature Extraction and Evaluation (DL-STFEE) model is proposed. The lower layer of DL-STFEE is spatial-temporal feature extraction layer. The spatial and temporal features in traffic data are extracted by multi-graph graph convolution and attention mechanism, and different combinations of spatial and temporal features are generated. The upper layer of DL-STFEE is the spatial-temporal feature evaluation layer. Through the attention score matrix generated by the high-dimensional self-attention mechanism, the spatial-temporal features combinations are fused and evaluated, so as to get the impact of different combinations on prediction effect. Three sets of experiments are performed on actual traffic datasets to show that DL-STFEE can effectively capture the spatial-temporal features and evaluate the importance of different spatial-temporal feature combinations.

READ FULL TEXT

page 10

page 11

page 26

page 29

research
09/15/2021

Multi View Spatial-Temporal Model for Travel Time Estimation

Taxi arrival time prediction is an essential part of building intelligen...
research
04/12/2019

Position-Aware Convolutional Networks for Traffic Prediction

Forecasting the future traffic flow distribution in an area is an import...
research
11/26/2021

Cyclic Graph Attentive Match Encoder (CGAME): A Novel Neural Network For OD Estimation

Origin-Destination Estimation plays an important role in traffic managem...
research
06/25/2019

Modeling Severe Traffic Accidents With Spatial And Temporal Features

We present an approach to estimate the severity of traffic related accid...
research
11/16/2018

Spatial-temporal Multi-Task Learning for Within-field Cotton Yield Prediction

Understanding and accurately predicting within-field spatial variability...
research
10/31/2021

Intrusion Detection using Spatial-Temporal features based on Riemannian Manifold

Network traffic data is a combination of different data bytes packets un...
research
12/03/2018

Feature Extraction for Temporal Signal Recognition: An Overview

Due to the huge progress of the recording devices, data from heterogeneo...

Please sign up or login with your details

Forgot password? Click here to reset