Abstract
This paper describes the results of the analysis of specific 'corner detection' algorithms within a Machine Vision approach for the problem of aerial refueling for unmanned aerial vehicles. Specifically, the performances of the SUSAN and the Harris corner detection algorithms have been compared. A critical goal of this study was to evaluate the interface of these feature extraction schemes with the successive detection and labeling, and pose estimation schemes in the overall scheme. Closed-loop simulations were performed using a Simulink®-based simulation environment to reproduce docking maneuvers using the US Air Force refueling boom. © 2006 Springer-Verlag.
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Vendra, S., Campa, G., Napolitano, M. R., Mammarella, M., Fravolini, M. L., & Perhinschi, M. G. (2007). Addressing corner detection issues for machine vision based UAV aerial refueling. Machine Vision and Applications, 18(5), 261–273. https://doi.org/10.1007/s00138-006-0056-9
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