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A New Semi-Supervised Classification Strategy Combining Active Learning and Spectral Unmixing of Hyperspectral Data

机译:一种新的半监督分类策略,结合高光谱数据的主动学习和光谱解密

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Hyperspectral remote sensing allows for the detailed analysis of the surface of the Earth by providing high-dimensional images with hundreds of spectral bands. Hyperspectral image classification plays a significant role in hyperspectral image analysis and has been a very active research area in the last few years. In the context of hyperspectral image classification, supervised techniques (which have achieved wide acceptance) must address a difficult task due to the unbalance between the high dimensionality of the data and the limited availability of labeled training samples in real analysis scenarios. While the collection of labeled samples is generally difficult, expensive, and time-consuming, unlabeled samples can be generated in a much easier way. Semi-supervised learning offers an effective solution that can take advantage of both unlabeled and a small amount of labeled samples. Spectral unmixing is another widely used technique in hyperspectral image analysis, developed to retrieve pure spectral components and determine their abundance fractions in mixed pixels. In this work, we propose a method to perform semi-supervised hyperspectral image classification by combining the information retrieved with spectral unmixing and classification. Two kinds of samples that are highly mixed in nature are automatically selected, aiming at finding the most informative unlabeled samples. One kind is given by the samples minimizing the distance between the first two most probable classes by calculating the difference between the two highest abundances. Another kind is given by the samples minimizing the distance between the most probable class and the least probable class, obtained by calculating the difference between the highest and lowest abundances. The effectiveness of the proposed method is evaluated using a real hyperspectral data set collected by the airborne visible infrared imaging spectrometer (AVIRIS) over the Indian Pines region in Northwestern Indiana. In the paper, techniques for efficient implementation of the considered technique in high performance computing architectures are also discussed.
机译:高光谱遥感允许通过提供具有数百个光谱带的高维图像来详细分析地球表面。高光谱图像分类在高光谱图像分析中发挥着重要作用,并且在过去几年中已经是一个非常活跃的研究区域。在高光谱图像分类的背景下,由于数据的高维度与实际分析方案中标记的训练样本的高度的有限可用性,监管技术必须解决困难的任务。虽然标记样本的集合通常是困难的,但昂贵且耗时,可以以更容易的方式产生未标记的样本。半监督学习提供了一种有效的解决方案,可以利用未标记的未标记和少量标记的样品。光谱解密是诸如高光谱图像分析中的另一种广泛使用的技术,开发用于检索纯光谱分量并确定它们在混合像素中的丰度分数。在这项工作中,我们提出了一种通过将检索到的光谱解吸和分类的信息组合来执行半监督高光谱图像分类的方法。自动选择高度混合的两种样品,旨在找到最具信息丰富的未标记样本。通过计算两个最高丰富之间的差异,由样本给出一种样本给出一种样本,最小化前两个最可能类之间的距离。通过基于计算最高和最低丰富之间的差异而最小化最可能类别和最不概率的类之间的距离的样本给出另一种。所提出的方法的有效性,使用由机载可见红外成像光谱仪(AVIRIS)超过在西北印第安纳印度松树区域采集的实际高光谱数据集进行评估。在本文中,还讨论了用于高性能计算架构中考虑技术的有效实现的技术。

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