Expert Knowledge as Basis for Assessing an Automatic Matching Procedure
Fecha
2021-05-02
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MDPI
Resumen
The continuous development of machine learning procedures and the development of new
ways of mapping based on the integration of spatial data from heterogeneous sources have resulted
in the automation of many processes associated with cartographic production such as positional
accuracy assessment (PAA). The automation of the PAA of spatial data is based on automated
matching procedures between corresponding spatial objects (usually building polygons) from two
geospatial databases (GDB), which in turn are related to the quantification of the similarity between
these objects. Therefore, assessing the capabilities of these automated matching procedures is key
to making automation a fully operational solution in PAA processes. The present study has been
developed in response to the need to explore the scope of these capabilities by means of a comparison
with human capabilities. Thus, using a genetic algorithm (GA) and a group of human experts, two
experiments have been carried out: (i) to compare the similarity values between building polygons
assigned by both and (ii) to compare the matching procedure developed in both cases. The results
obtained showed that the GA—experts agreement was very high, with a mean agreement percentage
of 93.3% (for the experiment 1) and 98.8% (for the experiment 2). These results confirm the capability
of the machine-based procedures, and specifically of GAs, to carry out matching tasks.
Descripción
Palabras clave
machine learning, expert knowledge, automatic matching, spatial data accuracy, automatic assessment
Citación
Ruiz-Lendínez, J. J., Ariza-López, F. J., & Ureña-Cámara, M. A. (2021). Expert Knowledge as Basis for Assessing an Automatic Matching Procedure. ISPRS International Journal of Geo-Information, 10(5), 289. https://doi.org/10.3390/ijgi10050289