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首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >An Experimental Comparison of Semi-supervised Learning Algorithms for Multispectral Image Classification
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An Experimental Comparison of Semi-supervised Learning Algorithms for Multispectral Image Classification

机译:半监督学习算法在多光谱图像分类中的实验比较

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摘要

Semi-Supervised Learning (ssl) method has recently caught much attention in the fields of machine learning and computer vision owing to its superiority in classifying abundant unlabelled samples using a few labeled samples. The goal of this paper is to provide an experimental efficiency comparison between graph based ssl algorithms and traditional supervised learning algorithms (e.g., support vector machines) for multispectral image classification. This research shows that ssl algorithms generally outperform supervised learning algorithms in both classification accuracy and anti-noise ability. In the experiments carried out on two data sets (hyperspectral image and Landsat image), the mean overall accuracies (OAs) of supervised learning algorithms are 15 percent and 86 percent, while the mean OAs of ssl algorithms are 26 percent and 99 percent. To overcome the polynomial complexity of ssl algorithms, we also developed a linear-complexity algorithm by employing multivariate Taylor Series Expansion (tse) and Woodbury Formula.
机译:由于半监督学习(ssl)方法在使用少量标记样本对大量未标记样本进行分类方面的优势,最近在机器学习和计算机视觉领域引起了广泛关注。本文的目的是提供基于图的ssl算法与传统的监督学习算法(例如支持向量机)进行多光谱图像分类的实验效率比较。这项研究表明,ssl算法在分类准确度和抗噪能力方面通常都优于监督学习算法。在两个数据集(高光谱图像和Landsat图像)上进行的实验中,监督学习算法的平均总体准确度(OAs)为15%和86%,而ssl算法的平均OAs为26%和99%。为了克服ssl算法的多项式复杂性,我们还通过使用多元泰勒级数展开(tse)和伍德伯里公式开发了线性复杂度算法。

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