Affiliation:
1. MIREA - Russian Technological University
2. National Research Mordovia State University
Abstract
Objectives. The paper aimed to develop and validate a neural network model for spatial data analysis. The advantage of the proposed model is the presence of a large number of degrees of freedom allowing its flexible configuration depending on the specific problem. This development is part of the knowledge base of a deep machine learning model repository including a dynamic visualization subsystem based on adaptive web interfaces allowing interactive direct editing of the architecture and topology of neural network models.Methods. The presented solution to the problem of improving the accuracy of spatial data analysis and classification is based on a geosystem approach for analyzing the genetic homogeneity of territorial-adjacent entities of different scales and hierarchies. The publicly available EuroSAT dataset used for initial validation of the proposed methodology is based on Sentinel-2 satellite imagery for training and testing machine learning models aimed at classifying land use/land cover systems. The ontological model of the repository including the developed model is decomposed into domains of deep machine learning models, project tasks and data, thus providing a comprehensive definition of the formalizing area of knowledge. Each stored neural network model is mapped to a set of specific tasks and datasets. Results. Model validation for the EuroSAT dataset algorithmically extended in terms of the geosystem approach allows classification accuracy to be improved under training data shortage within 9% while maintaining the accuracy of ResNet50 and GoogleNet deep learning models.Conclusions. The implemention of the developed model into the repository enhances the knowledge base of models for spatial data analysis as well as allowing the selection of efficient models for solving problems in the digital economy.
Subject
General Materials Science
Reference20 articles.
1. Saleh H., Alexandrov D., Dzhonov A. Uberisation business model based on blockchain for implementation decentralized application for lease/rent lodging. In: Rocha A., Serrhini M., (Eds.). Information Systems and Technologies to Support Learning (EMENA-ISTL 2018). Smart Innovation, Systems and Technologies. International Conference Europe Middle East & North Africa. Springer, Cham. 2018;111:225-232. https://doi.org/10.1007/978-3-030-03577-8_26
2. Sigov A.S., Tsvetkov V.Ya., Rogov I.E. Methods for assessing testing difficulty in education sphere. Russ. Technol. J. 2021;9(6):64-72 (in Russ.). https://doi.org/10.32362/2500-316X-2021-9-6-64-72
3. Liu Y., Sangineto E., Bi W., Sebe N., Lepri B., Nadai M. Efficient training of visual transformers with small datasets. Advances in Neural Information Processing Systems. 2021;34:23818-23830. Available from URL: https://arxiv.org/pdf/2106.03746.pdf
4. Zanozin V.V., Karabaeva A.Z., Koneeva A.V., Makeeva E.V., Molokova V.G. Features of the horizontal structure of the central part of the Volga delta landscape. In. Geographic Sciences and Education: Proceedings of the XI All-Russian Conf. 2018. P. 161-163 (in Russ.).
5. Yamashkina E.O., Kovalenko S.M., Platonova O.V. Development of repository of deep neural networks for the analysis of geospatial data. IOP Conf. Ser.: Mater. Sci. Eng. 2021;1047(1).012124. https.//doi.org/10.1088/1757-899X/1047/1/012124
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献