Reconstructing the Traffic State by Fusion of Heterogeneous Data
About
We present an advanced interpolation method for estimating smooth spatiotemporal profiles for local highway traffic variables such as flow, speed and density. The method is based on stationary detector data as typically collected by traffic control centres, and may be augmented by floating car data or other traffic information. The resulting profiles display transitions between free and congested traffic in great detail, as well as fine structures such as stop-and-go waves. We establish the accuracy and robustness of the method and demonstrate three potential applications: 1. compensation for gaps in data caused by detector failure; 2. separation of noise from dynamic traffic information; and 3. the fusion of floating car data with stationary detector data.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Traffic State Estimation | I-24 MOTION 200x200 grids (unobserved pixels) | LPIPS0.0821 | 108 | |
| Density Reconstruction | HighD | MAE1.91 | 24 | |
| Speed Reconstruction | HighD | MAE0.66 | 24 | |
| Speed Reconstruction | NGSIM 3% Penetration Rate (test) | MAE5.34 | 4 | |
| Density Reconstruction | NGSIM 3% Penetration Rate (test) | MAE6.96 | 4 | |
| Density Reconstruction | NGSIM Four-Loop Detector | MAE (veh/m)6.16 | 4 | |
| Speed Reconstruction | NGSIM Four-Loop Detector | MAE (m/s)4.82 | 4 | |
| Density Reconstruction | NGSIM 5% Penetration Rate (test) | MAE5.25 | 4 | |
| Density Reconstruction | NGSIM 10% Penetration Rate (test) | MAE4.35 | 4 | |
| Density Reconstruction | NGSIM 20% Penetration Rate (test) | MAE3.74 | 4 |