论文标题

用非常高的分辨率远程感知的光学图像分析单元,模型可伸缩性和可传递性的陆地分类综述

A Review of Landcover Classification with Very-High Resolution Remotely Sensed Optical Images-Analysis Unit,Model Scalability and Transferability

论文作者

Qin, Rongjun, Liu, Tao

论文摘要

作为遥感中的重要应用,地覆盖分类仍然是最高分辨率(VHR)图像分析中最具挑战性的任务之一。随着基于深度学习的迅速增加(DL)的陆覆方法和培训策略被认为是最先进的,因此已经零散的土地覆盖映射方法的技术景观已经进一步复杂。尽管存在大量文献审查工作,试图指导研究人员对陆文映射方法做出明智的选择,但这些文章要么着重于对特定领域的应用程序的审查,要么围绕一般深度学习模型进行,这些模型缺乏对不断前进的土地映射方法的系统性观点。此外,在以数据驱动方法为主的时代,与培训样本和模型可传递性有关的问题比以往任何时候都变得更加重要,但是在先前有关遥感分类的评论文章中,这些问题的解决程度较小。因此,在本文中,我们通过从学习方法开始进行系统概述,从学习方法开始和改变陆地映射任务的基本分析单元,再到有关可扩展性和可传递性的三个方面的挑战和解决方案,并以遥感分类为重点,包括(1)数据的稀疏性和不平衡数据; (2)跨不同地理区域的域间隙; (3)多源和多视图融合。我们详细讨论了每种分类方法,并在这些发展中提出了结论性的评论,并为持续的努力推荐了潜在的方向。

As an important application in remote sensing, landcover classification remains one of the most challenging tasks in very-high-resolution (VHR) image analysis. As the rapidly increasing number of Deep Learning (DL) based landcover methods and training strategies are claimed to be the state-of-the-art, the already fragmented technical landscape of landcover mapping methods has been further complicated. Although there exists a plethora of literature review work attempting to guide researchers in making an informed choice of landcover mapping methods, the articles either focus on the review of applications in a specific area or revolve around general deep learning models, which lack a systematic view of the ever advancing landcover mapping methods. In addition, issues related to training samples and model transferability have become more critical than ever in an era dominated by data-driven approaches, but these issues were addressed to a lesser extent in previous review articles regarding remote sensing classification. Therefore, in this paper, we present a systematic overview of existing methods by starting from learning methods and varying basic analysis units for landcover mapping tasks, to challenges and solutions on three aspects of scalability and transferability with a remote sensing classification focus including (1) sparsity and imbalance of data; (2) domain gaps across different geographical regions; and (3) multi-source and multi-view fusion. We discuss in detail each of these categorical methods and draw concluding remarks in these developments and recommend potential directions for the continued endeavor.

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