1. Accurate prediction of ice surface and bottom boundary based on multi-scale feature fusion network.
- Author
-
Cai, Yiheng, Wan, Fuxing, Hu, Shaobin, and Lang, Shinan
- Subjects
ICE sheets ,ANTARCTIC ice ,ICE ,REMOTE sensing ,PERFORMANCE technology ,GEOGRAPHIC boundaries - Abstract
Identifying the locations of ice surface and bottom boundary in the radar imagery enables the calculation of ice sheet thickness, which is one of important inputs for ice-sheet modelling and global climate research. Therefore, accurate predictions of the boundaries can contribute to improve the accuracy of global climate analysis and sea level prediction. However, an accurate boundary detection in radar sounder data collected from the polar ice sheet has still been a challenge because the boundaries of the ice layer are usually very weak and noisy, and subglacial topography is highly variable. In recent years, the deep learning methods have surpassed the performances of traditional technology and helped to overcome a series of problems, including image boundary segmentation and target detection. This paper proposes a multi-scale feature fusion network (MFFN) for boundary detection of ice sheet radar echograms, where the ground truth supervises the output of the network at different stages, rather than the output of the last layer of the network. Also, a multi-scale convolution module (MCM) is introduced to learn the rich multi-scale representation of each network stage from shallow to deep, which uses convolution with different dilation rates to obtain multi-scale features. Furthermore, an improved loss function makes the proposed MFFN more effective to solve the sample imbalance problem of boundary detection, and further improves the accuracy of boundary detection. The proposed method is verified experimentally using the radar echograms from 2009 provided by the Center of Remote Sensing of Ice Sheets (CReSIS) that are used as training and test data. In the experiments, the proposed MFFN not only achieves state-of-the-art boundary detection accuracy on the test set but also improves the visual effect by generating fine boundaries. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF