Analyzing Collective Motion Using Graph Fourier Analysis

ORAL

Abstract

Collective motion in animal groups, such as swarms of insects, flocks of birds, and schools of fish, are some of the most visually striking examples of emergent behavior. Empirical analysis of these behaviors in experiment or computational simulation primarily involves the use of "swarm-averaged" metrics or order parameters such as velocity alignment and angular momentum. Recently, tools from computational topology have been applied to the analysis of swarms to further understand and automate the detection of fundamentally different swarm structures evolving in space and time. Here, we show how the field of graph signal processing can be used to fuse these two approaches by collectively analyzing swarm properties using graph Fourier harmonics that respect the topological structure of the swarm. This graph Fourier analysis reveals hidden structure in a number of common swarming states and forms the basis of a flexible analysis framework for collective motion.

*This work was supported by NSF award NCS/FO 1835279 and JHU/APL internal research and development funds. Any opinion, findings, and conclusions or recommendations expressed in this material are those of the author(s) and do not necessarily reflect the views of the National Science Foundation

Presenters

  • Kevin Schultz

    • Applied Phys Lab/JHU
    • Johns Hopkins University Applied Physics Laboratory
    • Johns Hopkins University Applied Physics Lab

Authors

  • Kevin Schultz

    • Applied Phys Lab/JHU
    • Johns Hopkins University Applied Physics Laboratory
    • Johns Hopkins University Applied Physics Lab
  • Marisel Villafane-Delgado

    • Applied Phys Lab/JHU
  • Elizabeth P Reilly

    • Applied Phys Lab/JHU
  • Grace M Hwang

    • Applied Phys Lab/JHU
  • Anshu Saksena

    • Applied Phys Lab/JHU