Abstract

Recently, with the extensive application of deep learning techniques in the hyperspectral image (HSI) field, particularly convolutional neural network (CNN), the research of HSI classification has stepped into a new stage. To avoid the problem that the receptive field of naive convolution is small, the dilated convolution is introduced into the field of HSI classification. However, the dilated convolution usually generates blind spots in the receptive field, resulting in discontinuous spatial information obtained. In order to solve the above problem, a densely connected pyramidal dilated convolutional network (PDCNet) is proposed in this paper. Firstly, a pyramidal dilated convolutional (PDC) layer integrates different numbers of sub-dilated convolutional layers is proposed, where the dilated factor of the sub-dilated convolution increases exponentially, achieving multi-sacle receptive fields. Secondly, the number of sub-dilated convolutional layers increases in a pyramidal pattern with the depth of the network, thereby capturing more comprehensive hyperspectral information in the receptive field. Furthermore, a feature fusion mechanism combining pixel-by-pixel addition and channel stacking is adopted to extract more abstract spectral–spatial features. Finally, in order to reuse the features of the previous layers more effectively, dense connections are applied in densely pyramidal dilated convolutional (DPDC) blocks. Experiments on three well-known HSI datasets indicate that PDCNet proposed in this paper has good classification performance compared with other popular models.

Highlights

  • Hyperspectral remote sensing image is characterized by high dimension, high resolution, and rich spectral and spatial information [1], which have been diffusely used in numerous real-world tasks, such as sea ice detection [2], ecosystem monitoring [3,4], vegetation species analysis [5] and classification tasks [6,7]

  • From the point of view of the network structure, we have introduced dilated convolution and short connections in the densely pyramidal dilated convolutional (DPDC) block, while obtaining a larger receptive field, it eliminates the problem of blind spots caused by dilated convolution, which allows pyramidal dilated convolutional network (PDCNet) to obtain more continuous and comprehensive spatial information

  • We propose a densely connected pyramidal dilated convolutional neural network for hyperspectral image classification, which can capture more comprehensive spatial information

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Summary

Introduction

Hyperspectral remote sensing image is characterized by high dimension, high resolution, and rich spectral and spatial information [1], which have been diffusely used in numerous real-world tasks, such as sea ice detection [2], ecosystem monitoring [3,4], vegetation species analysis [5] and classification tasks [6,7]. Hyperspectral image classification is an vital branch in the subject of HSI, which has gradually become a crucial direction for scholars in the AI industry. It is worth noting that hyperspectral image pixel-level classification determines the category label of each pixel, and segmentation determines the boundary of a given category of objects.

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