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A Deep Learning Framework Approach for Urban Area Classification Using Remote Sensing Data

机译:使用遥感数据的城市地区分类深入学习框架方法

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The main aim of this study is to propose a Deep Learning framework approach for Urban area classification. The research proposes a multilevel Deep Learning architecture to detect the Urban/Non-Urban Area. The support models/parameters of the structure are Support Vector Machine (SVM), convolution of (Neural Networks) NN, high resolution sentinel 2 data, and several texture parameters. The experiments were conducted for the study region Lucknow which is a fast-growing metropolis of India, using Sentinel 2 satellite data of spatial resolution 10-m. The performance observed by the proposed ensembles of CNNs outperformed those of current state of art machine algorithms viz; SVM, Random Forest (RF) and Artificial Neural Network (ANN). It was observed that our Proposed Approach (PA) furnished the maximum classification accuracy of 96.24%, contrasted to SVM (65%), ANN (84%) and RF (88%). Several statistical parameters namely accuracy, specificity, sensitivity, precision and AUC, have been evaluated for examining performance during training and validation phase of the models.
机译:本研究的主要目的是为城市地区分类提出深度学习框架方法。该研究提出了一种多级深度学习架构来检测城市/非城市地区。该结构的支持模型/参数是支持向量机(SVM),(神经网络)NN,高分辨率Sentinel 2数据和几个纹理参数的卷积。该实验是针对研究区勒克瑙进行的,这是印度快速增长的印度大都市,使用Sentinel 2空间分辨率10-M的卫星数据。所拟议的CNNS合奏观察的性能优于现有的艺术机器算法常态的表现优势; SVM,随机森林(RF)和人工神经网络(ANN)。观察到我们所提出的方法(PA)提供了96.24%的最大分类准确度,与SVM(65%),ANN(84%)和RF(88%)形成鲜明对比。已经评估了几种统计参数即准确性,特异性,灵敏度,精度和AUC,以检查模型的培训和验证阶段的性能。

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