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Semisupervised hyperspectral imagery classification based on a three-dimensional convolutional adversarial autoencoder model with low sample requirements

机译:基于三维卷积对抗的自动化模型的半质量高光谱图像,具有低样本要求

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摘要

Although there are many state-of-the-art methods for hyperspectral classification, data deficiency is a problem that should be addressed before popularizing hyperspectral technology. To solve this problem, it is worth exploring methods based on small datasets. Inspired by the advanced deep learning classification methods and the autoencoder structure, we propose a structure named three-dimensional convolutional adversarial autoencoder that combines the two processes for semisupervised hyperspectral classification. Our experiments show its utility in data-deficient situations, and our study analyzes its advantages and disadvantages, and points out a probable direction toward optimization. (C) 2020 Society of Photo-Optical Instrumentation Engineers (SPIE).
机译:虽然有许多最先进的高光谱分类方法,但数据缺陷是在普及高光谱技术之前应解决的问题。 要解决此问题,值得基于小型数据集进行探索方法。 灵感来自先进的深度学习分类方法和自动化器结构,我们提出了一种名为三维卷积的对抗AutoEncoder的结构,该结构结合了半体积高光谱分类的两个过程。 我们的实验表明其在数据缺陷情况下的效用,我们的研究分析了其优缺点,并指出了可能的方向朝着优化方向。 (c)2020年光学光学仪表工程师协会(SPIE)。

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