Automatic vehicle trajectory data reconstruction at scale
Yanbing Wang, Derek Gloudemans, Junyi Ji, Zi Nean Teoh, Lisa Liu,, Gergely Zach\'ar, William Barbour, Daniel Work

TL;DR
This paper introduces an automated pipeline for correcting and reconstructing vehicle trajectories from vision-based data, improving accuracy and scalability for large-scale traffic monitoring systems.
Contribution
The paper presents a novel, scalable data reconciliation pipeline combining network circulation algorithms and quadratic programming for trajectory correction.
Findings
Improved trajectory accuracy across multiple datasets
Effective handling of fragmented and noisy data
Scalable processing on large camera networks
Abstract
In this paper we propose an automatic trajectory data reconciliation to correct common errors in vision-based vehicle trajectory data. Given "raw" vehicle detection and tracking information from automatic video processing algorithms, we propose a pipeline including (a) an online data association algorithm to match fragments that describe the same object (vehicle), which is formulated as a min-cost network circulation problem of a graph, and (b) a one-step trajectory rectification procedure formulated as a quadratic program to enhance raw detection data. The pipeline leverages vehicle dynamics and physical constraints to associate tracked objects when they become fragmented, remove measurement noises and outliers and impute missing data due to fragmentations. We assess the capability of the proposed two-step pipeline to reconstruct three benchmarking datasets: (1) a microsimulation…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Advanced Neural Network Applications · Video Surveillance and Tracking Methods
