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Geocomputation and Artificial Intelligence for Map**
Topic Information
Dear Colleagues,
In the era of big data, the emergence of massive data creates opportunities and challenges to map**. With the rapid development of Geocomputation and AI, RS map** theory, deep learning models, and programming frameworks contribute to the intellectual development of research in geospatial-related map**. In particular, the introduction of deep learning models and frameworks has greatly improved the accuracy and efficiency of geospatial-related map**. However, new technology creates new opportunities as well as new challenges. As such, why are Geocomputation and artificial intelligence needed for map**? Can specific problems be better solved using artificial intelligence techniques than traditional methods? Why does cartography need artificial intelligence, and how can artificial intelligence technology be used to improve the speed and accuracy of RS map**? What new directions can we expect AI techniques to introduce to the broader fields of map** and cartographic generalization?
The aim of this Topic is to provide the opportunity to explore the mentioned challenges in remote sensing map** using computer vision, deep learning, and artificial intelligence. Topics may cover but are not limited to the following: object detection, change detection, map styles transferring, automated workflow of map generalization and map**, etc.
- Map** object information extraction from remote sensing and street view imagery;
- Automatic extraction of map symbols and text annotations on maps and imagery;
- Change detection and map** based on artificial intelligence;
- Artificial intelligence for RS Map**;
- Object recognition through artificial intelligence techniques;
- Cartographic relief shading with neural networks;
- Map style transferring using generative adversarial networks;
- Integration of artificial intelligence and map design;
- Automated workflow of cartographic generalization;
- Spatial explicit neural networks for GeoAI applications;
- AI map** of urban socioeconomic patterns;
- Intelligent spatial analytics for earth process modeling and RS map**.
Dr. Lili Jiang
Dr. Di Zhu
Dr. An Zhang
Topic Editors
Keywords
- artificial intelligence
- deep learning
- AI for map**
- map styles transferring
- spatial patterns
- GeoAI
- map design
- remote sensing map**
- object detection
Participating Journals
Journal Name | Impact Factor | CiteScore | Launched Year | First Decision (median) | APC | |
---|---|---|---|---|---|---|
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Geomatics
|
- | - | 2021 | 21.8 Days | CHF 1000 | Submit |
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ISPRS International Journal of Geo-Information
|
2.8 | 6.9 | 2012 | 36.2 Days | CHF 1700 | Submit |
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Remote Sensing
|
4.2 | 8.3 | 2009 | 24.7 Days | CHF 2700 | Submit |
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