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Deep learning architectures for land cover classification using red and near-infrared satellite images

机译:使用红色和近红外卫星图像进行土地覆盖分类的深度学习架构

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Classification of remotely sensed data requires the modelling of suitable image processing algorithms. The rise of machine learning systems upgraded the viability of satellite image applications. Using Convolutional Neural Networks (CNN), benchmark classification exactness can be accomplished for land cover grouping. Motivated by the concept of Normalized Difference Vegetation Index (NDVI), this paper utilizes only the red and near infrared (NIR) band information for classifying the publicly available SAT-4 and SAT-6 datasets. This is done, since NDVI computation requires only the two band (red and NIR) information and the classes involved in the dataset are types of vegetation. In this work, new deep learning architectures for three different networks (AlexNet, ConvNet, VGG) were proposed by hypertuning the network and the input as two band data. The modified architectures with the two band information along with reduced number of filters were trained and tested model manages to classify the images into different classes. The proposed architectures are compared against the existing architectures in terms of accuracy, precision and trainable parameters. The proposed architecture is found to perform equally efficient by retaining high accuracy with less number of trainable parameters, when compared against the the performance of benchmark deep learning architectures for satellite image classification.
机译:遥感数据的分类需要对合适的图像处理算法进行建模。机器学习系统的兴起提高了卫星图像应用程序的可行性。使用卷积神经网络(CNN),可以对土地覆被分组实现基准分类的准确性。基于归一化植被指数(NDVI)的概念,本文仅利用红色和近红外(NIR)波段信息对公开可用的SAT-4和SAT-6数据集进行分类。这样做是因为NDVI计算仅需要两个波段(红色和NIR)信息,并且数据集中涉及的类别是植被类型。在这项工作中,通过超调谐网络和输入作为两个波段的数据,提出了针对三种不同网络(AlexNet,ConvNet,VGG)的新深度学习架构。带有两个频带信息以及减少数量的滤波器的经过修改的体系结构得到了训练和测试,模型成功地将图像分为不同的类别。在准确性,精度和可训练参数方面,将提出的体系结构与现有体系结构进行了比较。与用于卫星图像分类的基准深度学习体系结构的性能相比,该提议的体系结构通过保持高精度和较少数量的可训练参数而具有相同的效率。

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