An Annotated and Classified Maritime Dataset aimed at Machine Learning
Data ja resurssit
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Datasense@CRASZIP
The dataset contain two folders. One folder (images) with all the collected...
Lisätietoja
Kenttä | Arvo |
---|---|
Lähde | Singapore Maritime Dataset; Boat types recognition (Kaggle, v.1); SeaShips: A Large-Scale Precisely Annotated Dataset for Ship Detection (DOI: 10.1109/TMM.2018.2865686) |
Laatija | Diogo Duarte |
Viimeksi päivitetty | helmikuuta 17, 2023, 08:55 (UTC) |
Luotu | tammikuuta 20, 2022, 11:45 (UTC) |
Citation | Duarte, D., Pereira, M. I., & Pinto, A. M. (2022). An Annotated and Classified Maritime Dataset aimed at Machine Learning [Data set]. INESC TEC. https://doi.org/10.25747/96KP-5033 |
DOI | https://doi.org/10.25747/96kp-5033 |
dc.Contributor | Maria Inês Pereira; Andry Maykol Pinto |
dc.Coverage.Spatial | Singapore port; Leixões and Viana do Castelo ports. |
dc.Coverage.Temporal | October 2017 - November 2021 |
dc.Created.Date | January 17th, 2022 |
dc.Format | .zip; *.jpg; *txt |
dc.Language | EN |
dc.Relation | Multiple Vessel Detection and Tracking in Harsh Maritime Environments. Oceans Maritime Conference 2021 (To appear). |
dc.Type | Images form on-board camera (.jpg), annotated objects in YOLO format (.txt) |
ddi.InstrumentName | Mynteye |
ddi.Software | ROS (python) (C++) - to collect data from the SenseASV |
ddi.TypeInstrument | Video camera |