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Analyzing the Contribution of Training Algorithms on Deep Neural Networks for Hyperspectral Image Classification

机译:分析训练算法对高光谱图像分类深神经网络的贡献

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摘要

Autoencoder (AE)-based deep neural networks learn complex problems by generating feature-space conjugates of input data. The learning success of an AE is too sensitive for a training algorithm. The problem of hyperspectral image (HSI) classification by using spectral features of pixels is a highly complex problem due to its multi-dimensional and excessive data nature. In this paper, the contribution of three gradient-based training algorithms (i.e., scaled conjugate gradient (SCG), gradient descent (GD), and resilient backpropagation algorithms (RP)) on the solution of the HSI classification problem by using AE was analyzed. Also, it was investigated how neighborhood component analysis affects classification performance for training algorithms on HSIs. Two hyperspectral image classification benchmark data sets were used in the experimental analysis. Wilcoxon signed-rank test indicates that RB is statistically better than SCG and GD in solving the related image classification problem.
机译:基于AutoEncoder(AE)的深神经网络通过生成输入数据的特征空间共轭来学习复杂问题。 AE的学习成功对于训练算法来说太敏感。 由于其多维和过量的数据性质,通过使用像素的光谱特征来分类的高光谱图像(HSI)分类是一种高度复杂的问题。 在本文中,分析了通过使用AE对HSI分类问题解决方案的三种基于梯度的训练算法(即,缩放的共轭梯度(SCG),梯度下降(SCG),梯度下降(GD)和弹性反向验证算法(RP))的贡献 。 此外,研究了邻域分量分析如何影响HSIS上的培训算法的分类性能。 在实验分析中使用了两个高光谱图像分类基准数据集。 Wilcoxon签名 - 等级测试表明RB在解决相关图像分类问题时统计上比SCG和GD更好。

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