Neural Network Clustering Technology for Cartographic Images Recognition

V. Zhukovskyy, S. Shatnyi, N. Zhukovska, A. Sverstiuk
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引用次数: 5

Abstract

It is offered the information system of recognition of cartographic images of soil massifs and classification of landscape areas by types of soil massifs using the neural network. Here was described approaches to architecture design, teaching methods, data preparation for teaching, training and neural network testing. The functional scheme of the neural network is developed, which consists of the input, hidden and output layer, collecting and processing of data, and training algorithm. The analysis of efficiency, speed and accuracy of work of a neural network as a part of information technology is carried out.
地图图像识别中的神经网络聚类技术
提出了基于神经网络的土质地形图图像识别和按土质类型划分景观区的信息系统。本文介绍了体系结构设计的方法、教学方法、教学数据准备、训练和神经网络测试。提出了神经网络的功能方案,包括输入层、隐藏层和输出层,数据的采集和处理,以及训练算法。对作为信息技术一部分的神经网络的工作效率、速度和准确性进行了分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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