RasterNet: Modeling Free-Flow Speed using LiDAR and Overhead Imagery
Roadway free-flow speed captures the typical vehicle speed in low traffic conditions. Modeling free-flow speed is an important problem in transportation engineering with applications to a variety of design, operation, planning, and policy decisions of highway systems. Unfortunately, collecting large...
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Zusammenfassung: | Roadway free-flow speed captures the typical vehicle speed in low traffic
conditions. Modeling free-flow speed is an important problem in transportation
engineering with applications to a variety of design, operation, planning, and
policy decisions of highway systems. Unfortunately, collecting large-scale
historical traffic speed data is expensive and time consuming. Traditional
approaches for estimating free-flow speed use geometric properties of the
underlying road segment, such as grade, curvature, lane width, lateral
clearance and access point density, but for many roads such features are
unavailable. We propose a fully automated approach, RasterNet, for estimating
free-flow speed without the need for explicit geometric features. RasterNet is
a neural network that fuses large-scale overhead imagery and aerial LiDAR point
clouds using a geospatially consistent raster structure. To support training
and evaluation, we introduce a novel dataset combining free-flow speeds of road
segments, overhead imagery, and LiDAR point clouds across the state of
Kentucky. Our method achieves state-of-the-art results on a benchmark dataset. |
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DOI: | 10.48550/arxiv.2006.08021 |