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Ensemble Learning for Semantic Segmentation of Ancient Maya Architectures

Authors :
Kocev, Dragi
Simidjievski, Nikola
Kostovska, Ana
Dimitrovski, Ivica
Kokalj, Žiga
Hellweg, Thorben
Oehmcke, Stefen
Kariryaa, Ankit
Gieseke, Fabian
Igel, Christian
Kocev, Dragi
Simidjievski, Nikola
Kostovska, Ana
Dimitrovski, Ivica
Kokalj, Žiga
Hellweg, Thorben
Oehmcke, Stefen
Kariryaa, Ankit
Gieseke, Fabian
Igel, Christian
Source :
Hellweg , T , Oehmcke , S , Kariryaa , A , Gieseke , F & Igel , C 2022 , Ensemble Learning for Semantic Segmentation of Ancient Maya Architectures . in D Kocev , N Simidjievski , A Kostovska , I Dimitrovski & Ž Kokalj (eds) , Discover the Mysteries of the Maya : Selected Contributions from the Machine Learning Challenge & the Discovery Challenge Workshop, ECML PKDD 2021 . Jožef Stefan Institute , Ljubljana , pp. 13-19 , European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases 2021 , Bilbao , Spain , 13/09/2021 .
Publication Year :
2022

Abstract

Deep learning methods hold great promise for the automatic analysis of large-scale remote sensing data in archaeological research. Here, we present a robust approach to locating ancient Maya architectures (buildings, aguadas, and platforms) based on integrated segmentation of satellite imagery and aerial laser scanning data. Deep learning models with different architectures and loss functions were trained and combined to form an ensemble for pixel-wise classification. We applied both training data augmentation as well as test-time augmentation and performed morphological cleaning in the postprocessing phase. Our approach was evaluated in the context of the “Discover the mysteries of the Maya: An Integrated Image Segmentation Challenge” at ECML PKDD 2021 and achieved one of the best results with an average IoU of 0.8183.

Details

Database :
OAIster
Journal :
Hellweg , T , Oehmcke , S , Kariryaa , A , Gieseke , F & Igel , C 2022 , Ensemble Learning for Semantic Segmentation of Ancient Maya Architectures . in D Kocev , N Simidjievski , A Kostovska , I Dimitrovski & Ž Kokalj (eds) , Discover the Mysteries of the Maya : Selected Contributions from the Machine Learning Challenge & the Discovery Challenge Workshop, ECML PKDD 2021 . Jožef Stefan Institute , Ljubljana , pp. 13-19 , European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases 2021 , Bilbao , Spain , 13/09/2021 .
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1382499592
Document Type :
Electronic Resource