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Effect of pooling strategy on convolutional neural network for classification of hyperspectral remote sensing images

机译:池策略对卷积神经网络对高光谱遥感影像分类的影响

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摘要

The deep convolutional neural network (CNN) has recently attracted the researchers for classification of hyperspectral remote sensing images. The CNN mainly consists of convolution layer, pooling layer and fully connected layer. The pooling is a regularisation technique and improves the performance of CNN while reducing the computation time. Various pooling strategies have been developed in literature. This study shows the effect of pooling strategy on the performance of deep CNN for classification of hyperspectral remote sensing images. The authors have compared the performance of various pooling strategies such as max pooling, average pooling, stochastic pooling, rank-based average pooling and rank-based weighted pooling. The experiments were performed on three well-known hyperspectral remote sensing datasets: Indian Pines, University of Pavia and Kennedy Space Center. The proposed experimental results show that max pooling has produced better results for all the three considered datasets.
机译:深度卷积神经网络(CNN)最近吸引了研究人员对高光谱遥感图像进行分类。 CNN主要由卷积层,池化层和全连接层组成。池化是一种正则化技术,可在减少计算时间的同时提高CNN的性能。文献中已经开发了各种合并策略。这项研究显示了合并策略对深CNN进行高光谱遥感影像分类的效果。作者比较了各种合并策略的性能,例如最大合并,平均合并,随机合并,基于等级的平均合并和基于等级的加权合并。实验是在三个著名的高光谱遥感数据集上进行的:印度松树,帕维亚大学和肯尼迪航天中心。建议的实验结果表明,对于所有三个考虑的数据集,最大池化都产生了更好的结果。

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