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Multi-Object Tracking Analysis

In: Data Science for Nano Image Analysis

Author

Listed:
  • Chiwoo Park

    (Florida State University)

  • Yu Ding

    (Industrial & Systems Engineering)

Abstract

In situ microscopes are capable of imaging the transient dynamics of material processes at the nano-scale spatial resolution. The resulting material images contain the structures of material objects that change over the course of a material process. If one is interested in knowing how a population of material objects is collectively evolved in their sizes and shapes, a probability distribution function of the shapes and sizes ought to be tracked. Towards that objective, dynamic size distribution tracking is discussed in Chap. 7 , whereas dynamic shape distribution tracking is the focus of Chap. 8 . These distribution tracking methods are appropriate for characterizing the thermodynamic aspect of an overall material process, describing the behavior of a system containing a large number of material objects. But distribution tracking does not answer some other questions critical to material discovery, e.g., why do the size and shape distributions change as tracked, how do individual material objects evolve over time, and what type of chemical kinetics drives the evolution? If one is interested in explaining individualized evolutions or in learning the relationship between the chemical kinetics and the evolution process, then the temporal sequences of sizes, shapes, or other structural measures need to be tracked for individual material objects, in order to provide an in-depth analysis of the individual sequences. Such analysis is referred to as the multi-object tracking analysis. This chapter presents a detailed investigation on the topic of object tracking based on dynamic imaging measurements.

Suggested Citation

  • Chiwoo Park & Yu Ding, 2021. "Multi-Object Tracking Analysis," International Series in Operations Research & Management Science, in: Data Science for Nano Image Analysis, chapter 0, pages 277-321, Springer.
  • Handle: RePEc:spr:isochp:978-3-030-72822-9_10
    DOI: 10.1007/978-3-030-72822-9_10
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