Autonomous mooring towards autonomous maritime navigation and offshore operations
Jha, Ajit; Subedi, Dipendra; Løvsland, Per-Ove; Tyapin, Ilya; Cenkeramaddi, Linga Reddy; Beferull-Lozano, Baltasar; Hovland, Geir
Chapter
Accepted version
Permanent lenke
https://hdl.handle.net/11250/3131048Utgivelsesdato
2020Metadata
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Originalversjon
Jha, A., Subedi, D., Løvsland, P.- O., Tyapin, I., Cenkeramaddi, L. R., Beferull-Lozano, B. & Hovland, G. (2020). Autonomous mooring towards autonomous maritime navigation and offshore operations. 2020 15th IEEE Conference on Industrial Electronics and Applications (ICIEA), 1171-1175. https://doi.org/10.1109/ICIEA48937.2020.9248169Sammendrag
Bollard is a vital component of mooring system. It is the anchor point for mooring ropes to be fixed in order to secure the vessel or ship. An algorithm that translates the segmented mask of bollard output from masked R-CNN along with bounding box and associated class probability to its corresponding edge coordinate and finally to the single reference point for efficient detection and classification of bollard towards autonomous mooring is presented. At first stage, Mask R-CNN framework is trained with custom built bollard. The model obtained from the training is inferred with real data resulting in instance segment of bollard. The segmented mask obtained contains relatively large amount of the data points representing the whole area of bollard, which typically is not desirable. In order to precisely localize the bollard with one reference co-ordinate, the proposed algorithm is applied to segmented mask. Firstly, it translates the segmented mask to only four co-ordinate points, where each point correspond to the edge of bollard. Further, from the edges, the reference point is estimated. This causes significant reduction in point of interest (POI) and has potential to reduce the error encountered during pose estimation of the bollard in 3D thus making the autonomous mooring more precise and accurate.
Beskrivelse
Author's accepted manuscript.
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