Detection of small object at a distance using flickering frequency and trajectory patterns

Main Article Content

Sutthiphong Srigrarom

Abstract

In this proposal, we intend to research on the innovative and unconventional way to detect small object at a distance using flickering frequency and trajectory patterns (if possible). The object can be drones and can be under cluttered or obscured condition. The initial detecting part can be done by fusion of (1) flickering frequency pattern identification, (2) flight trajectory pattern (if possible) and (3) visual sensor with deep learning.


The subsequent tracking part is intended to be the ongoing-research 3D coordinated image-based dynamic localizations technique.

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How to Cite
[1]
S. Srigrarom, “Detection of small object at a distance using flickering frequency and trajectory patterns”, Def. Technol. Acad. J., vol. 1, no. 3, pp. 30–37, Jan. 2020.
Section
Defence Analysis Articles

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