Bibliographische Detailangaben
| Titel: |
A feasibility study of applying generative deep learning models for map labeling |
| Autoren: |
Oucheikh, Rachid, Harrie, Lars |
| Weitere Verfasser: |
Lund University, Faculty of Science, Dept of Physical Geography and Ecosystem Science, Lunds universitet, Naturvetenskapliga fakulteten, Institutionen för naturgeografi och ekosystemvetenskap, Originator, Lund University, Profile areas and other strong research environments, Strategic research areas (SRA), eSSENCE: The e-Science Collaboration, Lunds universitet, Profilområden och andra starka forskningsmiljöer, Strategiska forskningsområden (SFO), eSSENCE: The e-Science Collaboration, Originator |
| Quelle: |
Cartography and Geographic Information Science. 51(1):168-191 |
| Schlagwörter: |
Natural Sciences, Computer and Information Sciences, Other Computer and Information Science, Naturvetenskap, Data- och informationsvetenskap (Datateknik), Annan data- och informationsvetenskap |
| Beschreibung: |
The automation of map labeling is an ongoing research challenge. Currently, the map labeling algorithms are based on rules defined by experts for optimizing the placement of the text labels on maps. In this paper, we investigate the feasibility of using well-labeled map samples as a source of knowledge for automating the labeling process. The basic idea is to train deep learning models, specifically the generative models CycleGAN and Pix2Pix, on a large number of map examples. Then, the trained models are used to predict good locations of the labels given unlabeled raster maps. We compare the results obtained by the deep learning models to manual map labeling and a state-of-the-art optimization-based labeling method. A quantitative evaluation is performed in terms of legibility, association and map readability as well as a visual evaluation performed by three professional cartographers. The evaluation indicates that the deep learning models are capable of finding appropriate positions for the labels, but thatthey, in this implementation, are not well suited for selecting the labels to show and to determine the size of the labels. The result provides valuable insights into the current capabilities of generative models for such task, while also identifying the key challenges that will shape future research directions. |
| Zugangs-URL: |
https://doi.org/10.1080/15230406.2023.2291051 |
| Datenbank: |
SwePub |