Land Cover Classification Based on Multimodal Remote Sensing Fusion

Wei Chen, Jiage Chen, Yuewu Wan, Xining Liu, Mengya Cai, Jingguo Xu, Hongbo Cui, Mengdie Duan
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Abstract

Abstract. Global high-precision and high timeliness land cover data is a fundamental and strategic resource for global strategic interest maintenance, global environmental change research, and sustainable development planning. However, due to difficulties in obtaining control and reference information from overseas, a single data source cannot effectively cover, and surface coverage classification faces significant challenges in information extraction. Based on this, this article proposes an intelligent interpretation method for typical elements based on multimodal fusion, starting from the characteristics of domestic remote sensing images. It also develops an optical SAR data conversion and complementarity strategy based on convolutional translation networks, as well as a typical element extraction algorithm. This solves the problems of sparse remote sensing images, limited effective observations, and difficult information recognition, thereby achieving automation of typical element information under dense observation time series High precision extraction and analysis.
基于多模态遥感融合的土地覆盖分类
摘要全球高精度、高时效的土地覆被数据是全球战略利益维护、全球环境变化研究和可持续发展规划的基础性、战略性资源。然而,由于难以从国外获取对照和参考信息,单一数据源无法有效覆盖,地表覆盖分类在信息提取方面面临巨大挑战。基于此,本文从国内遥感影像的特点出发,提出了基于多模态融合的典型要素智能解译方法。同时开发了基于卷积翻译网络的光学 SAR 数据转换与互补策略,以及典型要素提取算法。这解决了遥感影像稀疏、有效观测有限、信息识别困难等问题,从而实现了密集观测时间序列下典型要素信息的自动化高精度提取和分析。
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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