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Parallel supervised land-cover classification system for hyperspectral and multispectral images

机译:高光谱和多光谱图像的并行监督土地覆盖分类系统

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摘要

Hyperspectral and multispectral imagery allows remote-sensing applications such as the land-cover mapping, which is a significant baseline to understand and to monitor the Earth. Furthermore, it is a relevant process for socio-economic activities. For that reason, high land-classification accuracies are imperative, and minor image processing time is essential. In addition, the process of gathering classes’ documented samples is complicated. This implies that the classification system is required to perform with a limited number of training observations. Another point worth mentioning is that there are hardly any methods that can be used analogously for hyperspectral or multispectral images. This paper aims to propose a novel classification system that can be used for both types of images. The designed classification system is composed of a novel parallel feature extraction algorithm, which utilises a cluster of two graphics processing units in combination with a multicore central processing unit (CPU), and an artificial neural network (ANN) particularly devised for the classification of the features ensued by the implemented feature extraction method. To prove the performance of the proposed classification system, it is compared with non-parallel and CPU-only-parallel implementations employing multispectral and hyperspectral databases. Moreover, experiments with different number of samples for training the classifier are performed. Finally, the proposed ANN is compared with a state-of-the-art support vector machine in classification and processing time results.
机译:高光谱和多光谱图像允许遥感应用,例如土地覆盖制图,这是理解和监视地球的重要基准。此外,这是社会经济活动的一个相关过程。因此,必须具有很高的土地分类精度,并且至关重要的是图像处理时间短。此外,收集课程记录的样本的过程很复杂。这意味着需要分类系统来执行有限数量的训练观察。值得一提的另一点是,几乎没有任何方法可以类似地用于高光谱或多光谱图像。本文旨在提出一种可用于两种类型图像的新颖分类系统。设计的分类系统由一种新颖的并行特征提取算法组成,该算法利用两个图形处理单元的群集以及一个多核中央处理器(CPU)以及专门用于分类的人工神经网络(ANN)。实施的特征提取方法所产生的特征。为了证明提出的分类系统的性能,将其与采用多光谱和高光谱数据库的非并行和仅CPU并行实现进行了比较。此外,执行了具有不同数量样本的实验以训练分类器。最后,将所提出的人工神经网络与最新的支持向量机进行分类和处理时间结果进行比较。

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