Pyramid Convolutional Neural Networks and Bottleneck Residual Modules for Classification of Multispectral Images

Yukun Huang, Jingbo Wei, Wenchao Tang, Chaoqi He
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引用次数: 3

Abstract

The newly emerging classifier using deep network architectures and pyramid bottleneck modules exhibits stronger capability than traditional classifiers. However, they are only suitable for color images or hyperspectral images due to the structural, textural and spectral differences against multispectral images. In this paper, a new network is designed for the classification of high-resolution multispectral images. The new network follows the architecture of pyramid residual network, but the input size, filter size, and filter number of each layer are totally different. These designs make the pyramid residual network conforming to the multispectral advantages of spatial resolutions so as to improve classification performance. Experiments on the satellite multispectral data from GF-1 and RapidEye demonstrate the superiority of the new network.
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金字塔卷积神经网络与瓶颈残差模块在多光谱图像分类中的应用
采用深度网络结构和金字塔瓶颈模块的分类器比传统分类器表现出更强的分类能力。然而,由于与多光谱图像的结构、纹理和光谱差异,它们只适用于彩色图像或高光谱图像。本文设计了一种新的高分辨率多光谱图像分类网络。新网络遵循金字塔残差网络的架构,但每层的输入大小、滤波器大小和滤波器数量完全不同。这些设计使金字塔残差网络符合空间分辨率的多光谱优势,从而提高分类性能。在GF-1和RapidEye卫星多光谱数据上的实验证明了该网络的优越性。
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