GeoAI at ACM SIGSPATIAL

Author:

Lunga Dalton1,Hu Yingjie2,Newsam Shawn3,Gao Song4,Martins Bruno5,Yang Lexie1,Deng Xueqing3

Affiliation:

1. Oak Ridge National Laboratory

2. University at Buffalo

3. University of California

4. University of Wisconsin-Madison

5. University of Lisbon, Portugal

Abstract

Geospatial Artificial Intelligence (GeoAI) is an interdisciplinary field enjoying tremendous adoption. However, the efficient design and implementation of GeoAI systems face many open challenges. This is mainly due to the lack of non-standardized approaches to artificial intelligence tool development, inadequate platforms, and a lack of multidisciplinary engagements, which all motivate domain experts to seek a shared stage with scientists and engineers to solve problems of significant impact on society. Since its inception in 2017, the GeoAI series of workshops has been co-located with the Association for Computing Machinery International Conference on Advances in Geographic Information Systems. The workshop series has fostered a nexus for geoscientists, computer scientists, engineers, entrepreneurs, and decision-makers, from academia, industry, and government to engage in artificial intelligence, spatio-temporal data computing, and geospatial data science research, motivated by various challenges. In this article, we revisit and discuss the state of GeoAI open research directions, the recent developments, and an emerging agenda calling for a continued cross-disciplinary community engagement.

Publisher

Association for Computing Machinery (ACM)

Subject

General Medicine

Reference75 articles.

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5. Deep Learning-Based Classification of Hyperspectral Data

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