论文标题
使用完全卷积网络的深层冰层跟踪和厚度估算
Deep Ice Layer Tracking and Thickness Estimation using Fully Convolutional Networks
论文作者
论文摘要
全球变暖正在迅速减少世界各地的冰川和冰盖。需要对这种减少的实时评估以监控其全球气候影响。在本文中,我们介绍了一种新颖的方式,可以使用雪雷达图像和完全卷积的网络估算每个内部冰层的厚度。估计的厚度可用于每年了解积雪。为了了解每个内部冰层的深度和结构,我们在雷达图像上执行多级语义分割,这尚未执行。由于雷达图像缺乏良好的训练标签,因此我们执行了预处理技术,以获得一套干净的标签。在独特地检测每个冰层之后,我们计算其厚度并将其与处理的地面真相进行比较。这是第一次分别检测到每个冰层,并且通过自动技术计算其厚度。通过此过程,我们能够估计平均绝对误差约为3.6像素的冰层厚度。这种基于深度学习的方法可以与越来越多的数据集一起使用,以对Cryosperic研究进行准确的评估。
Global warming is rapidly reducing glaciers and ice sheets across the world. Real time assessment of this reduction is required so as to monitor its global climatic impact. In this paper, we introduce a novel way of estimating the thickness of each internal ice layer using Snow Radar images and Fully Convolutional Networks. The estimated thickness can be used to understand snow accumulation each year. To understand the depth and structure of each internal ice layer, we perform multi-class semantic segmentation on radar images, which hasn't been performed before. As the radar images lack good training labels, we carry out a pre-processing technique to get a clean set of labels. After detecting each ice layer uniquely, we calculate its thickness and compare it with the processed ground truth. This is the first time that each ice layer is detected separately and its thickness calculated through automated techniques. Through this procedure we were able to estimate the ice-layer thicknesses within a Mean Absolute Error of approximately 3.6 pixels. Such a Deep Learning based method can be used with ever-increasing datasets to make accurate assessments for cryospheric studies.