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Subroto, Imam Much Ibnu; Nabila, Natasha Faras (2025) Obstacle Detection in Coastal Areas for Autonomous Ships using Faster R-CNN. IOP Conference Series: Earth and Environmental Science, 1543 (1). doi:10.1088/1755-1315/1543/1/012033

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Reference TypeJournal (article/letter/editorial)
TitleObstacle Detection in Coastal Areas for Autonomous Ships using Faster R-CNN
JournalIOP Conference Series: Earth and Environmental Science
AuthorsSubroto, Imam Much IbnuAuthor
Nabila, Natasha FarasAuthor
Year2025 (September 1)Volume1543
Issue1
PublisherIOP Publishing
DOIdoi:10.1088/1755-1315/1543/1/012033Search in ResearchGate
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Mindat Ref. ID19082204Long-form Identifiermindat:1:5:19082204:2
GUID0
Full ReferenceSubroto, Imam Much Ibnu; Nabila, Natasha Faras (2025) Obstacle Detection in Coastal Areas for Autonomous Ships using Faster R-CNN. IOP Conference Series: Earth and Environmental Science, 1543 (1). doi:10.1088/1755-1315/1543/1/012033
Plain TextSubroto, Imam Much Ibnu; Nabila, Natasha Faras (2025) Obstacle Detection in Coastal Areas for Autonomous Ships using Faster R-CNN. IOP Conference Series: Earth and Environmental Science, 1543 (1). doi:10.1088/1755-1315/1543/1/012033
In(2025, September) IOP Conference Series: Earth and Environmental Science Vol. 1543 (1). IOP Publishing

References Listed

These are the references the publisher has listed as being connected to the article. Please check the article itself for the full list of references which may differ. Not all references are currently linkable within the Digital Library.

Della (2024)
Mayantasari (2022)
Pardede (2022) MIND J “Deteksi Objek Kereta Api menggunakan Metode Faster RCNN dengan Arsitektur VGG 16” 7, 21
Not Yet Imported: - journal-article : 10.51519/journalita.volume1.isssue3.year2020.page185-197

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Soylo (2024) Medium “Object Detection Using the Faster R-CNN Model with ResNet-50 Architecture in PyTorch”
Singh (2024) Medium “Understanding and Implementing Faster R-CNN”
Karmakar (2018) Medium “Region Proposal Network (RPN) — Backbone of Faster R-CNN”
Acharya (2021) Parking Occupancy Detection and Slot Delineation Using Deep Learning: A Tutorial Visual parking space detection using deep features View project Visual-inertial odometry for indoor positioning View project
Not Yet Imported: Computers and Electronics in Agriculture - journal-article : 10.1016/j.compag.2023.107622

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Htake (2025) “Comparative Analysis of ImageNet and COCO Datasets for Automatic Image Annotation : Challenges and Solutions”


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