Multimodal Remote Sensing Image Registration Methods and Advancements: A Survey

Remote. Sens. Pub Date : 2021-12-17 DOI:10.3390/rs13245128
Xinyue Zhang, Chengcai Leng, Yameng Hong, Zhao Pei, I. Cheng, A. Basu
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引用次数: 19

Abstract

With rapid advancements in remote sensing image registration algorithms, comprehensive imaging applications are no longer limited to single-modal remote sensing images. Instead, multi-modal remote sensing (MMRS) image registration has become a research focus in recent years. However, considering multi-source, multi-temporal, and multi-spectrum input introduces significant nonlinear radiation differences in MMRS images for which researchers need to develop novel solutions. At present, comprehensive reviews and analyses of MMRS image registration methods are inadequate in related fields. Thus, this paper introduces three theoretical frameworks: namely, area-based, feature-based and deep learning-based methods. We present a brief review of traditional methods and focus on more advanced methods for MMRS image registration proposed in recent years. Our review or comprehensive analysis is intended to provide researchers in related fields with advanced understanding to achieve further breakthroughs and innovations.
多模态遥感图像配准方法与进展综述
随着遥感图像配准算法的快速发展,综合成像应用已不再局限于单模态遥感图像。因此,多模态遥感图像配准已成为近年来的研究热点。然而,考虑到多源、多时间和多光谱输入,MMRS图像中存在显著的非线性辐射差异,需要研究新的解决方案。目前,相关领域对MMRS图像配准方法的综述和分析还不够全面。因此,本文介绍了三个理论框架:基于区域的方法、基于特征的方法和基于深度学习的方法。本文简要回顾了传统的MMRS图像配准方法,重点介绍了近年来提出的更先进的MMRS图像配准方法。我们的综述或综合分析旨在为相关领域的研究人员提供深入的了解,以实现进一步的突破和创新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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