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PANTHER. Trajectory Analysis
Author(s) -
Mark Daniel Rintoul,
Andrew T. Wilson,
Christopher G. Valicka,
W. Philip Kegelmeyer,
Timothy M. Shead,
Benjamin Newton,
Kristina Rodriguez Czuchlewski
Publication year - 2015
Publication title -
osti oai (u.s. department of energy office of scientific and technical information)
Language(s) - English
Resource type - Reports
DOI - 10.2172/1221864
Subject(s) - counterintuitive , salient , convex hull , curvature , trajectory , computer science , geometric analysis , invariant (physics) , artificial intelligence , feature (linguistics) , mathematics , regular polygon , pattern recognition (psychology) , computer vision , algorithm , geometry , differential algebraic equation , mathematical analysis , ordinary differential equation , philosophy , linguistics , physics , epistemology , astronomy , mathematical physics , differential equation
We want to organize a body of trajectories in order to identify, search for, classify and predict behavior among objects such as aircraft and ships. Existing compari- son functions such as the Fr'echet distance are computationally expensive and yield counterintuitive results in some cases. We propose an approach using feature vectors whose components represent succinctly the salient information in trajectories. These features incorporate basic information such as total distance traveled and distance be- tween start/stop points as well as geometric features related to the properties of the convex hull, trajectory curvature and general distance geometry. Additionally, these features can generally be mapped easily to behaviors of interest to humans that are searching large databases. Most of these geometric features are invariant under rigid transformation. We demonstrate the use of different subsets of these features to iden- tify trajectories similar to an exemplar, cluster a database of several hundred thousand trajectories, predict destination and apply unsupervised machine learning algorithms.

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