Optimized Artificial Neural Network for the Classification of Urban Environment Comfort using Landsat-8 Remote Sensing Data in Greater Jakarta Area, Indonesia

Nurwita Mustika Sari, Dony Kushardono, Mukhoriyah Mukhoriyah, Kustiyo Kustiyo, Masita Dwi Mandini Manessa
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引用次数: 1

Abstract

The development of computer vision technology as a type of artificial intelligence is increasing rapidly in various fields. This method uses deep learning methods based on artificial neural networks, a well-performed algorithm in multi-parameter analysis. One of the development of computer vision models and algorithms is for a thematic digital image classification, such as environmental analysis. Remote sensing based digital image classification is one of the reliable tools for environmental quality analysis. This study aims to perform neural network optimization for the analysis of the urban environment comfort based on satellite data. The input data used are 4 types of geobiophysical indexes as urban environmental comfort parameters derived from cloud-free annual mosaics Landsat-8 remote sensing satellite data. The results obtained in this study indicate that the 1 hidden layer neural network architecture with 16 neurons for the classification of urban environmental comfort and 10 other land cover classes is quite good. The result of the classification using this optimized artificial neural network shows that the distribution of classes is very uncomfortable which dominates the Greater Jakarta area and its surroundings. For other classes in the study area, some are uncomfortable and rather comfortable. By using this method, we obtained a fast classification training time of 18 seconds for 145 iterations to achieve an RMS Error of 0.01, and has a fairly high classification accuracy overall 89% with a Kappa coefficient of 0.88, while the 2 hidden layer neural network architecture does not succeed in achieving convergence
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基于Landsat-8遥感数据的印尼大雅加达地区城市环境舒适度分类优化人工神经网络
计算机视觉技术作为人工智能的一种,在各个领域发展迅速。该方法采用了基于人工神经网络的深度学习方法,这是一种在多参数分析中表现良好的算法。计算机视觉模型和算法的发展之一是用于特定主题的数字图像分类,例如环境分析。基于遥感的数字图像分类是环境质量分析的可靠工具之一。本研究旨在基于卫星数据对城市环境舒适度进行神经网络优化。输入数据采用4种地球生物物理指标作为城市环境舒适度参数,这些参数来源于无云年度马赛克Landsat-8遥感卫星数据。本研究结果表明,包含16个神经元的1隐层神经网络架构对城市环境舒适度和其他10个土地覆盖类别的分类效果较好。使用这种优化的人工神经网络进行分类的结果表明,在大雅加达地区及其周边地区,班级的分布非常不舒服。对于学习区的其他班级来说,有些班级不舒服,有些班级比较舒服。使用该方法,我们获得了145次迭代18秒的快速分类训练时间,RMS误差为0.01,总体分类准确率达到89%,Kappa系数为0.88,而2隐层神经网络架构未能成功实现收敛
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1.50
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0.00%
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审稿时长
4 weeks
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