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What issue does metadata deal with in managing spatial data? 


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Metadata deals with the issue of managing spatial data by providing information about the content, quality, type, creation, distribution, and spatial information of a dataset. It helps in organizing, sharing, discovering, assessing, and accessing spatial data and services. The current approaches to metadata management face challenges such as manual and time-consuming processes, detached metadata creation from the spatial data lifecycle, lack of automatic metadata updating, and disconnection of end users from the metadata creation process. These issues can affect the usability and effectiveness of metadata systems for spatial data discovery and selection. The research papers by Kalantari et al. , Olfat et al. , and Sidda address these challenges and propose approaches and tools for automated metadata generation, updating, and enrichment, as well as integrating metadata with the spatial data lifecycle to improve the management and usability of spatial data.

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Papers (4)Insight
Open accessDissertation
01 Jan 2013
12 Citations
The issue that metadata deals with in managing spatial data is the creation, updating, and enrichment of metadata for an ever-growing amount of data created and shared in Spatial Data Infrastructures (SDIs) and data sharing platforms.
The paper discusses the issue of usability of spatial metadata profiles in managing spatial data.
The paper highlights a knowledge gap in the usability of metadata systems for end-users in managing spatial data.
The issue that metadata deals with in managing spatial data is the lack of an appropriate approach to automated metadata generation and updating.

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