A Multiscale Joint Deep Neural Network for Glacier Contour Extraction

IF 2 4区 地球科学 Q3 REMOTE SENSING Canadian Journal of Remote Sensing Pub Date : 2021-11-17 DOI:10.1080/07038992.2021.1986810
Jinzhou Liu, Li Fang, Huifang Shen, Shudong Zhou
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引用次数: 1

Abstract

Abstract Rapid and accurate acquisition of glacier regional changes is of great significance to the study of glaciers. Among all satellite images, Synthetic Aperture Radar (SAR) data has a great advantage in monitoring the glaciers in harsh weather conditions. Conventionally, glacier boundaries are manually delineated on images. However, this is a time-consuming process, especially in the batch process of large-area data. In this paper, we propose a Multiscale Joint Deep Neural Network (MJ-DNN) for large-scale glaciers contour extraction using single-polarimetric SAR intensity images. Based on U-Net, the proposed method has been improved in three aspects. First, Atrous Separable Convolution is used instead of convolution with the down-sampling part. Second, we propose a multiscale joint convolution layer to obtain information at multiple scales. Third, we deepen the network with the residual connection structure for higher-level features. At the final layer, we optimize the network result with the conditional random field method. To validate our approach, we test it on three glaciers and we compare the segmentation results of four different methods in parallel. The results show that the intersection over the union of the proposed method is the most efficient.
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用于冰川轮廓提取的多尺度联合深度神经网络
快速准确地获取冰川区域变化对冰川研究具有重要意义。在所有卫星图像中,合成孔径雷达(SAR)数据在监测恶劣天气条件下的冰川方面具有很大的优势。传统上,冰川边界是在图像上手工划定的。但是,这是一个耗时的过程,特别是在大面积数据的批量处理中。本文提出了一种基于多尺度联合深度神经网络(MJ-DNN)的单极化SAR图像大尺度冰川轮廓提取方法。基于U-Net,该方法在三个方面进行了改进。首先,采用非均匀可分卷积代替下采样部分的卷积。其次,我们提出了一个多尺度联合卷积层来获取多尺度信息。第三,利用残差连接结构对网络进行深度挖掘。在最后一层,我们使用条件随机场方法对网络结果进行优化。为了验证我们的方法,我们在三个冰川上进行了测试,并并行比较了四种不同方法的分割结果。结果表明,所提方法的交点优于并集是最有效的。
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来源期刊
自引率
3.80%
发文量
40
期刊介绍: Canadian Journal of Remote Sensing / Journal canadien de télédétection is a publication of the Canadian Aeronautics and Space Institute (CASI) and the official journal of the Canadian Remote Sensing Society (CRSS-SCT). Canadian Journal of Remote Sensing provides a forum for the publication of scientific research and review articles. The journal publishes topics including sensor and algorithm development, image processing techniques and advances focused on a wide range of remote sensing applications including, but not restricted to; forestry and agriculture, ecology, hydrology and water resources, oceans and ice, geology, urban, atmosphere, and environmental science. Articles can cover local to global scales and can be directly relevant to the Canadian, or equally important, the international community. The international editorial board provides expertise in a wide range of remote sensing theory and applications.
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