Abstract

The increasing availability of very high-resolution remote sensing imagery (i.e., from satellites, airborne laser scanning, or aerial photography) represents both a blessing and a curse for researchers. The manual classification of these images, or other similar geo-sensor data, is time-consuming and leads to subjective and non-deterministic results. Due to this fact, (semi-) automated classification approaches are in high demand in affected research areas. Ontologies provide a proper way of automated classification for various kinds of sensor data, including remotely sensed data. However, the processing of data entities—so-called individuals—is one of the most cost-intensive computational operations within ontology reasoning. Therefore, an approach based on graph databases is proposed to overcome the issue of a high time consumption regarding the classification task. The introduced approach shifts the classification task from the classical Protégé environment and its common reasoners to the proposed graph-based approaches. For the validation, the authors tested the approach on a simulation scenario based on a real-world example. The results demonstrate a quite promising improvement of classification speed—up to 80,000 times faster than the Protégé-based approach.

Highlights

  • The increasing availability of very high-resolution remote sensing imagery represents both a blessing and a curse for researchers.The manual classification of these images, or other similar geo-sensor data, is time-consuming and leads to subjective and non-deterministic results

  • When comparing the results regarding 10,000 individuals, it can be seen that the RDF/SPARQL-based approach is approximately 75 times faster than the Neo4j-based approach

  • The authors presented an approach towards a computational improvement of ontology-based classification of segmented remote sensing imagery using graph databases

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Summary

Introduction

The manual classification of these images, or other similar geo-sensor data, is time-consuming and leads to subjective and non-deterministic results. Due to this fact, (semi-) automated classification approaches are in high demand in affected research areas. Ontologies provide a proper way of automated classification for various kinds of sensor data, including remotely sensed data. The formalized expert knowledge within the ontology ensures that every classification task is performed in such a way that a human expert would act, based on his or her knowledge, and repeated classification runs will produce the exact same classification results in terms of classification outcomes and the associated accuracy. Several studies have focused on this issue, analyzing the performance of available reasoners [2,3,4]

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