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Yellapantula, 2019 - Google Patents

Synthesizing realistic data for vision based drone-to-drone detection

Yellapantula, 2019

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Document ID
10341725161439437940
Author
Yellapantula S
Publication year

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In the thesis, we aimed at building a robust UAV (drone) detection algorithm through which, one drone could detect another drone in flight. Though this was a straight forward object detection problem, the biggest challenge we faced for drone detection is the limited amount …
Continue reading at vtechworks.lib.vt.edu (PDF) (other versions)

Classifications

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