空间数据分析神经网络模型的开发

E. Yamashkina, S. Yamashkin, O. V. Platonova, S. Kovalenko
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引用次数: 1

摘要

目标。本文旨在开发并验证用于空间数据分析的神经网络模型。该模型的优点是存在大量的自由度,允许其根据具体问题进行灵活配置。该开发是深度机器学习模型库知识库的一部分,包括基于自适应web界面的动态可视化子系统,允许对神经网络模型的体系结构和拓扑进行交互式直接编辑。为提高空间数据分析和分类的准确性,提出了一种基于地理系统的方法来分析不同尺度和层次的领土相邻实体的遗传同质性。用于初步验证拟议方法的公开EuroSAT数据集基于Sentinel-2卫星图像,用于训练和测试旨在对土地利用/土地覆盖系统进行分类的机器学习模型。存储库的本体模型(包括开发的模型)被分解为深度机器学习模型、项目任务和数据领域,从而提供了形式化知识领域的全面定义。每个存储的神经网络模型都映射到一组特定的任务和数据集。结果。根据geosystem方法对EuroSAT数据集进行算法扩展的模型验证,可以在训练数据不足9%的情况下提高分类精度,同时保持ResNet50和GoogleNet深度学习模型的精度。将开发的模型实现到存储库中,增强了空间数据分析模型的知识库,并允许选择有效的模型来解决数字经济中的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a neural network model for spatial data analysis
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.
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