Review on Convolutional Neural Networks (CNN) in vegetation remote sensing

被引:998
作者
Kattenborn, Teja [1 ]
Leitloff, Jens [2 ]
Schiefer, Felix [3 ]
Hinz, Stefan [2 ]
机构
[1] Univ Leipzig, Remote Sensing Ctr Earth Syst Res, Talstr 35, D-04103 Leipzig, Germany
[2] Karlsruher Inst Technol KIT, Inst Photogrammetry & Remote Sensing IPF, Englerstr 7, D-76131 Karlsruhe, Germany
[3] Karlsruher Inst Technol KIT, Inst Geog & Geoecol IFGG, D-76131 Karlsruhe, Germany
关键词
Convolutional Neural Networks (CNN); Deep learning; Vegetation; Plants; Remote sensing; Earth observation; TREE SPECIES CLASSIFICATION; TERRESTRIAL LIDAR DATA; LAND-COVER; HYPERSPECTRAL IMAGERY; RADIATIVE-TRANSFER; CONIFER FOREST; DEEP; SEGMENTATION; BENCHMARK; MACHINE;
D O I
10.1016/j.isprsjprs.2020.12.010
中图分类号
P9 [自然地理学];
学科分类号
0705 ; 070501 ;
摘要
Identifying and characterizing vascular plants in time and space is required in various disciplines, e.g. in forestry, conservation and agriculture. Remote sensing emerged as a key technology revealing both spatial and temporal vegetation patterns. Harnessing the ever growing streams of remote sensing data for the increasing demands on vegetation assessments and monitoring requires efficient, accurate and flexible methods for data analysis. In this respect, the use of deep learning methods is trend-setting, enabling high predictive accuracy, while learning the relevant data features independently in an end-to-end fashion. Very recently, a series of studies have demonstrated that the deep learning method of Convolutional Neural Networks (CNN) is very effective to represent spatial patterns enabling to extract a wide array of vegetation properties from remote sensing imagery. This review introduces the principles of CNN and distils why they are particularly suitable for vegetation remote sensing. The main part synthesizes current trends and developments, including considerations about spectral resolution, spatial grain, different sensors types, modes of reference data generation, sources of existing reference data, as well as CNN approaches and architectures. The literature review showed that CNN can be applied to various problems, including the detection of individual plants or the pixel-wise segmentation of vegetation classes, while numerous studies have evinced that CNN outperform shallow machine learning methods. Several studies suggest that the ability of CNN to exploit spatial patterns particularly facilitates the value of very high spatial resolution data. The modularity in the common deep learning frameworks allows a high flexibility for the adaptation of architectures, whereby especially multi-modal or multi-temporal applications can benefit. An increasing availability of techniques for visualizing features learned by CNNs will not only contribute to interpret but to learn from such models and improve our understanding of remotely sensed signals of vegetation. Although CNN has not been around for long, it seems obvious that they will usher in a new era of vegetation remote sensing.
引用
收藏
页码:24 / 49
页数:26
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