Abstract

Using deep learning to improve the capabilities of high-resolution satellite images has emerged recently as an important topic in automatic classification. Deep networks track hierarchical high-level features to identify objects; however, enhancing the classification accuracy from low-level features is often disregarded. We therefore proposed a two-stream deep-learning neural network strategy, with a main stream utilizing fine spatial-resolution panchromatic images to retain low-level information under a supervised residual network structure. An auxiliary line employed an unsupervised net to extract high-level abstract and discriminative features from multispectral images to supplement the spectral information in the main stream. Various feature extraction types from the neural network were selected and jointed in the novel net, as the combined high- and low-level features could provide a superior solution to image classification. In traditional convolutional neural networks, increased network depth might not influence the network performance perceptibly; however, we introduced a residual neural network to develop the expressive ability of the deeper net, increasing the role of net depth in feature extraction. To enhance feature robustness, we proposed a novel consolidation part in feature extraction. An adversarial net improved the feature extraction capabilities and aided digging the inherent and discriminative features from data, with increased extraction efficacy. Tests on satellite images indicated the high overall accuracy of our novel net, verifying that net depth or number of convolution kernels affected the classification capability. Various comparative tests proved the structural rationality for our two-stream structure.

Highlights

  • With the continuous development of earth observation, very high resolution (VHR) satellite imaging plays a significant role in various applications, including image classification, change detection, object recognition, land-cover mapping, building extraction and urban planning [1,2,3,4,5]

  • We introduced the concept of generative adversarial network (GAN), which is rare in HR remote sensing image classification

  • The main structure of the proposed method will be introduced, including two streams, one of which is the main line, with a residual network structure for PAN images and the other is an Stacked Convolutional Auto Encoder (SCAE) net supported by adversarial net, serving as an auxiliary part to extract features from multispectral images and to aid the main line

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Summary

Introduction

With the continuous development of earth observation, very high resolution (VHR) satellite imaging plays a significant role in various applications, including image classification, change detection, object recognition, land-cover mapping, building extraction and urban planning [1,2,3,4,5]. Aspects such as the rich patterns, ground features and geometrical information of VHR satellite image classification form the basis to these applications. DL is a kind of method simulating reaction of human brain when recognizing objects through multi-layer process from retina to cortex [32], which is designed to help extracting general, invariant and robust features.

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