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Fuzziness-based active learning framework to enhance hyperspectral image classification performance for discriminative and generative classifiers

机译:基于模糊的主动学习框架,提高鉴别和生成分类器的高光谱图像分类性能

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摘要

Hyperspectral image classification with a limited number of training samples without loss of accuracy is desirable, as collecting such data is often expensive and time-consuming. However, classifiers trained with limited samples usually end up with a large generalization error. To overcome the said problem, we propose a fuzziness-based active learning framework (FALF), in which we implement the idea of selecting optimal training samples to enhance generalization performance for two different kinds of classifiers, discriminative and generative (e.g. SVM and KNN). The optimal samples are selected by first estimating the boundary of each class and then calculating the fuzziness-based distance between each sample and the estimated class boundaries. Those samples that are at smaller distances from the boundaries and have higher fuzziness are chosen as target candidates for the training set. Through detailed experimentation on three publically available datasets, we showed that when trained with the proposed sample selection framework, both classifiers achieved higher classification accuracy and lower processing time with the small amount of training data as opposed to the case where the training samples were selected randomly. Our experiments demonstrate the effectiveness of our proposed method, which equates favorably with the state-of-the-art methods.
机译:具有有限数量的训练样本而不会损失精度的高光谱图像的分类是合乎需要的,因为收集这类数据通常是昂贵的且耗时的。然而,有限的样本训练的分类通常具有较大的推广错误告终。为了克服上述问题,本文提出了一种基于模糊主动学习框架(FALF),我们在其中实现选择最佳的训练样本的理念,以提高推广能力为两种不同的分类,辨别和生成的(如SVM和KNN) 。最佳样品通过首先估计每一类别的边界,然后计算每一个样品和所估计的类边界之间的基于模糊距离选择。这些样品是在从边界较小的距离,并具有较高的模糊性被选择作为训练集目标候选。通过在三个公开可用的数据集的详细的实验,我们发现,当与所提出的样本选择框架的训练,这两个分类器来实现更高的分级精度和更低的处理时间与训练数据量小,而不是在训练样本被随机选择的情况下。我们的实验证明我们提出的方法,这与国家的最先进的方法等同于良好的效果。

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