abstract: Big data that contain geo-referenced attributes have significantly reformed the way that I process and analyze geospatial data. Compared with the expected benefits received in the data-rich environment, more data have not always contributed to more accurate analysis. “Big but valueless” has becoming a critical concern to the community of GIScience and data-driven geography. As a highly-utilized function of GeoAI technique, deep learning models designed for processing geospatial data integrate powerful computing hardware and deep neural networks into various dimensions of geography to effectively discover the representation of data. However, limitations of these deep learning models have also been reported when People may have to s...
Advances in machine learning research are pushing the limits of geographical information sciences (G...
Geospatial data sits at the core of many data-driven application domains, from urban analytics to sp...
We live in the era of ‘Big Data’. In particular, Geospatial data, whether captured through remote se...
In this paper GeoAI is introduced as an emergent spatial analytical framework for data-intensive GIS...
Processing, mining and analyzing big data adds significant value towards solving previously unverifi...
The UN laid out 17 Sustainable Development Goals as part of the “The 2030 Agenda for Sustainable Dev...
University of Minnesota Ph.D. dissertation. August 2016. Major: Computer Science. Advisor: Shashi Sh...
The convergence of big data and geospatial computing has brought forth challenges and opportunities ...
Taken literally, geoAI is the use of Artificial Intelligence methods and techniques in solving geo-s...
Many regions around the world suffer from a lack of authoritatively-collected data on factors critic...
Mapping landscape patterns and dynamics is essential to various scientific domains and many practica...
There are growing opportunities to leverage new technologies and data sources to address global prob...
Geospatial big data consisting of records at the individual level or with fine spatial resolutions, ...
Geographic data are information associated with a location on the surface of the Earth. They compris...
Most data sets and streams have a geospatial component. Some people even claim that about 80% of all...
Advances in machine learning research are pushing the limits of geographical information sciences (G...
Geospatial data sits at the core of many data-driven application domains, from urban analytics to sp...
We live in the era of ‘Big Data’. In particular, Geospatial data, whether captured through remote se...
In this paper GeoAI is introduced as an emergent spatial analytical framework for data-intensive GIS...
Processing, mining and analyzing big data adds significant value towards solving previously unverifi...
The UN laid out 17 Sustainable Development Goals as part of the “The 2030 Agenda for Sustainable Dev...
University of Minnesota Ph.D. dissertation. August 2016. Major: Computer Science. Advisor: Shashi Sh...
The convergence of big data and geospatial computing has brought forth challenges and opportunities ...
Taken literally, geoAI is the use of Artificial Intelligence methods and techniques in solving geo-s...
Many regions around the world suffer from a lack of authoritatively-collected data on factors critic...
Mapping landscape patterns and dynamics is essential to various scientific domains and many practica...
There are growing opportunities to leverage new technologies and data sources to address global prob...
Geospatial big data consisting of records at the individual level or with fine spatial resolutions, ...
Geographic data are information associated with a location on the surface of the Earth. They compris...
Most data sets and streams have a geospatial component. Some people even claim that about 80% of all...
Advances in machine learning research are pushing the limits of geographical information sciences (G...
Geospatial data sits at the core of many data-driven application domains, from urban analytics to sp...
We live in the era of ‘Big Data’. In particular, Geospatial data, whether captured through remote se...