利用高斯突触人工神经网络分离高光谱图像中的低比例端元

J. L. Crespo, R. Duro, Fernando L6pez Pefia
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引用次数: 2

摘要

在本文中,我们考虑了基于高斯突触的人工神经网络在高光谱图像中端元混合率较低的情况下的检测和解混。这些网络和开发的训练算法在确定图像中存在的不同端元的丰度方面非常有效,使用非常小的训练集,可以在不知道存在端元比例的情况下获得。这些网络的验证和测试是通过将它们应用于一组人工生成的高光谱图像的基准集来进行的,这些高光谱图像包含五个端元,它们的丰度在空间上是不同的。作为第二个测试,我们将该策略应用于真实图像,并检查它们在标记不同的区域之间存在转换的区域中的行为,并将它们与假设的光谱演变进行比较,从一个区域对应的端元到另一个区域的端元。我们找到了很好的通信。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unmixing low ratio endmembers through Gaussian synapse ANNs in hyperspectral images
In this paper we considered the application of Gaussian synapse based artificial neural networks to the detection and unmixing of endmembers in cases where some of them are mixed in a low ratio within hyperspectral images. These networks and the training algorithm developed are very efficient in the determination of the abundances of the different endmembers present in the image using a very small training set that can be obtained without any knowledge on the proportions of endmembers present. The validation and test of these networks is carried out through their application to a benchmark set of artificially generated hyperspectral images containing five endmembers with spatially diverse abundances. As a second test, we applied the strategy to a real image and checked their behavior in regions where there were transitions between zones that were labeled differently and compared them to a hypothetical evolution of the spectrum from the endmember corresponding to one of the regions to the endmember of the other. A very good correspondence was found.
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