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Towards breaking the spatial resolution barriers: An optical flow and super-resolution approach for sea ice motion estimation

机译:迈向突破空间分辨率壁垒:一种用于海冰运动估计的光流和超分辨率方法

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Estimation of sea ice motion at fine scales is important for a number of regional and local level applications, including modeling of sea ice distribution, ocean-atmosphere and climate dynamics, as well as safe navigation and sea operations. In this study, we propose an optical flow and super-resolution approach to accurately estimate motion from remote sensing images at a higher spatial resolution than the original data. First, an external example learning-based super-resolution method is applied on the original images to generate higher resolution versions. Then, an optical flow approach is applied on the higher resolution images, identifying sparse correspondences and interpolating them to extract a dense motion vector field with continuous values and subpixel accuracies. Our proposed approach is successfully evaluated on passive microwave, optical, and Synthetic Aperture Radar data, proving appropriate for multi-sensor applications and different spatial resolutions. The approach estimates motion with similar or higher accuracy than the original data, while increasing the spatial resolution of up to eight times. In addition, the adopted optical flow component outperforms a state-of-the-art pattern matching method. Overall, the proposed approach results in accurate motion vectors with unprecedented spatial resolutions of up to 1.5 km for passive microwave data covering the entire Arctic and 20 m for radar data, and proves promising for numerous scientific and operational applications. (C) 2018 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:精细估算海冰运动对于许多区域和地方层面的应用都很重要,包括海冰分布,海洋-大气和气候动态模型以及安全航行和海上作业的建模。在这项研究中,我们提出了一种光流和超分辨率方法,可以以比原始数据更高的空间分辨率从遥感影像中准确估计运动。首先,将基于示例学习的外部示例超分辨率方法应用于原始图像以生成更高分辨率的版本。然后,将光流方法应用于较高分辨率的图像,识别稀疏对应并对其进行插值,以提取具有连续值和子像素精度的密集运动矢量场。我们提出的方法已成功地在无源微波,光学和合成孔径雷达数据上进行了评估,证明适用于多传感器应用和不同的空间分辨率。该方法估计运动的精度与原始数据相似或更高,同时将空间分辨率提高了八倍。另外,所采用的光流分量优于最新的图案匹配方法。总体而言,所提出的方法可产生精确的运动矢量,对于覆盖整个北极地区的无源微波数据而言,其空域分辨率高达1.5 km,而对于雷达数据而言,其空域分辨率则高达空前的20 m,并被证明在众多科学和操作应用中很有希望。 (C)2018国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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