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A new tool for supervised classification of satellite images available on web servers: Google Maps as a case of study

机译:Web服务器上可用的用于对卫星图像进行监督分类的新工具:以Google Maps为例

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This paper describes a new web platform dedicated to the classification of satellite images called Hypergim. The current implementation of this platform enables users to perform classification of satellite images from any part of the world thanks to the worldwide maps provided by Google Maps. To perform this classification, Hypergim uses unsupervised algorithms like Isodata and K-means. Here, we present an extension of the original platform in which we adapt Hypergim in order to use supervised algorithms to improve the classification results. This involves a significant modification of the user interface, providing the user with a way to obtain samples of classes present in the images to use in the training phase of the classification process. Another main goal of this development is to improve the runtime of the image classification process. To achieve this goal, we use a parallel implementation of the Random Forest classification algorithm. This implementation is a modification of the well-known CURFIL software package. The use of this type of algorithms to perform image classification is widespread today thanks to its precision and ease of training. The actual implementation of Random Forest was developed using CUDA platform, which enables us to exploit the potential of several models of NVIDIA graphics processing units using them to execute general purpose computing tasks as image classification algorithms. As well as CUDA, we use other parallel libraries as Intel Boost, taking advantage of the multithreading capabilities of modern CPUs. To ensure the best possible results, the platform is deployed in a cluster of commodity graphics processing units (GPUs), so that multiple users can use the tool in a concurrent way. The experimental results indicate that this new algorithm widely outperform the previous unsupervised algorithms implemented in Hypergim, both in runtime as well as precision of the actual classification of the images.
机译:本文介绍了一种专门用于卫星图像分类的新Web平台,称为Hypergim。该平台的当前实现使用户能够借助Google Maps提供的全球地图对来自世界任何地方的卫星图像进行分类。为了执行此分类,Hypergim使用了非监督算法,例如Isodata和K-means。在这里,我们提出了原始平台的扩展,其中我们对Hypergim进行了改编,以便使用监督算法来改善分类结果。这涉及对用户界面的重大修改,从而为用户提供一种获取图像中存在的类的样本的方法,以用于分类过程的训练阶段。该开发的另一个主要目标是改善图像分类过程的运行时间。为了实现此目标,我们使用随机森林分类算法的并行实现。此实现是对众所周知的CURFIL软件包的修改。由于这种算法的精确度和易于训练,如今已广泛使用这种算法来进行图像分类。随机森林的实际实现是使用CUDA平台开发的,这使我们能够利用NVIDIA图形处理单元的多种模型的潜力,利用它们来执行通用计算任务作为图像分类算法。除CUDA外,我们还利用其他并行库作为Intel Boost,以充分利用现代CPU的多线程功能。为了确保获得最佳结果,该平台部署在一组商品图形处理单元(GPU)中,以便多个用户可以同时使用该工具。实验结果表明,该新算法在运行时间以及图像实际分类的精度方面都大大优于Hypergim中实现的无监督算法。

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