Visual Servoing for Aerial Vegetation Sampling Systems
Zahra Samadikhoshkho,
Michael G. Lipsett
Abstract:This research describes a vision-based control strategy that employs deep learning for an aerial manipulation system developed for vegetation sampling in remote, dangerous environments. Vegetation sampling in such places presents considerable technical challenges such as equipment failures and exposure to hazardous elements. Controlling aerial manipulation in unstructured areas such as forests remains a significant challenge because of uncertainty, complex dynamics, and the possibility of collisions. To overco… Show more
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