Abstract

Analyzing the surface and bedrock locations in radar imagery enables the computation of ice sheet thickness, which is important for the study of ice sheets, their volume and how they may contribute to global climate change. However, the traditional handcrafted methods cannot quickly provide quantitative, objective and reliable extraction of information from radargrams. Most traditional handcrafted methods, designed to detect ice-surface and ice-bed layers from ice sheet radargrams, require complex human involvement and are difficult to apply to large datasets, while deep learning methods can obtain better results in a generalized way. In this study, an end-to-end multi-scale attention network (MsANet) is proposed to realize the estimation and reconstruction of layers in sequences of ice sheet radar tomographic images. First, we use an improved 3D convolutional network, C3D-M, whose first full connection layer is replaced by a convolution unit to better maintain the spatial relativity of ice layer features, as the backbone. Then, an adjustable multi-scale module uses different scale filters to learn scale information to enhance the feature extraction capabilities of the network. Finally, an attention module extended to 3D space removes a redundant bottleneck unit to better fuse and refine ice layer features. Radar sequential images collected by the Center of Remote Sensing of Ice Sheets in 2014 are used as training and testing data. Compared with state-of-the-art deep learning methods, the MsANet shows a 10% reduction (2.14 pixels) on the measurement of average mean absolute column-wise error for detecting the ice-surface and ice-bottom layers, runs faster and uses approximately 12 million fewer parameters.

Highlights

  • ground-penetrating radar (GPR) can collect large-scale ice sheet echograms efficiently, GPR is influenced by noise, making the boundaries of ice layers in the echograms fuzzy and difficult to identify

  • The radar echograms have been widely used to map the structure of the bedrock underlying the ice sheet to obtain information on the ice sheet [3,4,5,6,7,8] and estimate the ice flow and the cumulative rate of ice and snow to predict their contribution to sea level rise [14,15,16]

  • We propose the multi-scale attention network (MsANet) framework to extract and reconstruct ice layers from radar topological sequences at less cost

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Summary

Introduction

GPR can collect large-scale ice sheet echograms efficiently, GPR is influenced by noise, making the boundaries of ice layers in the echograms fuzzy and difficult to identify. It is a great challenge to extract useful information from echograms accurately and efficiently. The manual labeled method, which is commonly used to mark important ice layer information [14,15,16,17,18], is a highly time-consuming and tedious task. Researchers began to explore semi-automatic and automatic methods to quickly and accurately extract ice layer locations [18,19,20,21,22,23,24,25,26].

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