基于CNN集成的遥感场景分类

Najd Alosaimi, H. Alhichri
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引用次数: 4

摘要

近年来,遥感图像中的场景分类问题引起了人们的广泛关注。机器学习社区广泛使用不同的融合方法来融合分类器。本文提出了一种决策级融合方法来融合一组最先进的CNN分类器,即VGG-16、SqueezeNet和DenseNet。首先,实验证明这些分类器不会犯相同的分类错误,即大多数时候它们中至少有一个提供了正确的分类。因此,这三个分类器是多种多样的,因此相互补充。为了利用这一发现,开发了一种新的决策级融合方法,该方法结合了使用投票和置信度融合技术的分类决策。为了证明所提出的融合方法的有效性,结果证明了使用融合与训练单个网络如何提高分类的准确性。介绍了UC Merced数据集、KSA多传感器数据集、航空图像数据集(AID)、Optimal31数据集和Whurs19数据集的初步结果。与最先进的方法的初步比较显示了该解决方案的潜力,并鼓励进一步研究该方法。
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Fusion of CNN ensemble for Remote Sensing Scene Classification
Scene classification problem in remote sensing (RS) images has attracted many researchers recently. Different fusion methods have been widely used by the machine learning community to fuse classifiers. In this paper, a decision-level fusion method has been proposed to fuse a set of stat-of-the-art CNN classifiers, namely VGG-16, SqueezeNet, and DenseNet. First, the experiment proves that these classifiers do not make the same classification mistakes, i.e. most of the time at least one of them provides correct classification. Thus these three classifiers are diverse and hence complement each other. To exploit this discovery, a novel decision-level fusion method that combines the classification decisions using voting and confidence fusion techniques has been developed. To show the effectiveness of the proposed fusion method, the results demonstrate how the accuracy of the classification can be enhanced using fusion versus training individual networks. The preliminary results for the UC Merced dataset, the KSA multisensor dataset, Aerial Image Datasets (AID), Optimal31 dataset and Whurs19 dataset have been presented. Preliminary comparison to state-of-the-art methods show the promising capabilities of this solution and encourages to investigate this method further.
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