東北大学 大学院情報科学研究科 情報基礎科学専攻 計算機構論分野
(東北大学 工学部 電気情報物理工学科 情報工学コース)
青木・伊藤(康)研究室

Stereo Radargrammetry Using Deep Learning from Airborne SAR Images

Tatsuya Sasayama (Tohoku University) , Shintaro Ito (Tohoku University) , Koichi Ito (Tohoku University) , Takafumi Aoki (Tohoku University)
IEEE International Geoscience and Remote Sensing Symposium, pp. 7904--7908, August 2025.
Graphical Abstract
Abstract

In this paper, we propose a stereo radargrammetry method using deep learning from airborne Synthetic Aperture Radar (SAR) images. Deep learning-based methods are considered to suffer less from geometric image modulation, while there is no public SAR image dataset used to train such methods. We create a SAR image dataset and perform fine-tuning of a deep learning-based image correspondence method. The proposed method suppresses the degradation of image quality by pixel interpolation without ground projection of the SAR image and divides the SAR image into patches for processing, which makes it possible to apply deep learning. Through a set of experiments, we demonstrate that the proposed method exhibits a wider range and more accurate elevation measurements compared to conventional methods.

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