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Determination of Relevant Hyperspectral Bands Using a Spectrally constrained CNN

机译:使用光谱约束CNN确定相关的高光谱带

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For transmitting the large amount of hyperspectral image (HSI) data over a small data link from a small platform to the ground, an efficient data compression with low computational cost has to be done at the platform. Additionally, spectral band reduction interpreted as preprocessing of the compression is reasonable. We present a method for hyperspectral band reduction using a modified convolutional neural network (CNN) which retains the information about the spectral origin from layer to layer until it can be assigned directly to the classes to be classified. The relevant bands for each class are determined. Experimental verification shows that the network architecture using only the relevant bands has improved stability and results in a better overall performance.
机译:对于从来自小型平台到地面的小数据链路通过从小型平台传输大量的高光谱图像(HSI)数据,必须在平台上进行低计算成本的有效数据压缩。 另外,解释为压缩的预处理的光谱带减少是合理的。 我们介绍了一种用于使用修改的卷积神经网络(CNN)的高光谱带减少的方法,该卷积神经网络(CNN)将关于频谱原点的频谱原点的信息从层到层保留,直到它可以直接分配给要分类的类别。 确定每个类的相关频段。 实验验证表明,仅使用相关频带的网络架构具有改善的稳定性并导致更好的整体性能。

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