The past decade has witnessed the rapid development of geospatial artificial intelligence (GeoAI) primarily due to the ground-breaking achievements in deep learning and machine learning. A growing number of scholars from cartography have demonstrated successfully that GeoAI can accelerate previously complex cartographic design tasks and even enable cartographic creativity in new ways. Despite the promise of GeoAI, researchers and practitioners have growing concerns about the ethical issues of GeoAI for cartography. In this paper, we conducted a systematic content analysis and narrative synthesis of research studies integrating GeoAI and cartography to summarize current research and development trends regarding the usage of GeoAI for cartographic design. Based on this review and synthesis, we first identify dimensions of GeoAI methods for cartography such as data sources, data formats, map evaluations, and six contemporary GeoAI models, each of which serves a variety of cartographic tasks. These models include decision trees, knowledge graph and semantic web technologies, deep convolutional neural networks, generative adversarial networks, graph neural networks, and reinforcement learning. Further, we summarize seven cartographic design applications where GeoAI have been effectively employed: generalization, symbolization, typography, map reading, map interpretation, map analysis, and map production. We also raise five potential ethical challenges that need to be addressed in the integration of GeoAI for cartography: commodification, responsibility, privacy, bias, and (together) transparency, explainability, and provenance. We conclude by identifying four potential research directions for future cartographic research with GeoAI: GeoAI-enabled active cartographic symbolism, human-in-the-loop GeoAI for cartography, GeoAI-based mapping-as-a-service, and generative GeoAI for cartography.


翻译:暂无翻译

0
下载
关闭预览

相关内容

FlowQA: Grasping Flow in History for Conversational Machine Comprehension
专知会员服务
34+阅读 · 2019年10月18日
Keras François Chollet 《Deep Learning with Python 》, 386页pdf
专知会员服务
163+阅读 · 2019年10月12日
Transferring Knowledge across Learning Processes
CreateAMind
29+阅读 · 2019年5月18日
Unsupervised Learning via Meta-Learning
CreateAMind
43+阅读 · 2019年1月3日
A Technical Overview of AI & ML in 2018 & Trends for 2019
待字闺中
18+阅读 · 2018年12月24日
Focal Loss for Dense Object Detection
统计学习与视觉计算组
12+阅读 · 2018年3月15日
IJCAI | Cascade Dynamics Modeling with Attention-based RNN
KingsGarden
13+阅读 · 2017年7月16日
国家自然科学基金
13+阅读 · 2017年12月31日
国家自然科学基金
2+阅读 · 2015年12月31日
国家自然科学基金
2+阅读 · 2015年12月31日
国家自然科学基金
0+阅读 · 2014年12月31日
VIP会员
相关资讯
Transferring Knowledge across Learning Processes
CreateAMind
29+阅读 · 2019年5月18日
Unsupervised Learning via Meta-Learning
CreateAMind
43+阅读 · 2019年1月3日
A Technical Overview of AI & ML in 2018 & Trends for 2019
待字闺中
18+阅读 · 2018年12月24日
Focal Loss for Dense Object Detection
统计学习与视觉计算组
12+阅读 · 2018年3月15日
IJCAI | Cascade Dynamics Modeling with Attention-based RNN
KingsGarden
13+阅读 · 2017年7月16日
相关基金
国家自然科学基金
13+阅读 · 2017年12月31日
国家自然科学基金
2+阅读 · 2015年12月31日
国家自然科学基金
2+阅读 · 2015年12月31日
国家自然科学基金
0+阅读 · 2014年12月31日
Top
微信扫码咨询专知VIP会员