Discipline of Geography, School of Agricultural, Earth and Environmental Sciences, University of KwaZulu-Natal, Private Bag X01, Scottsville, Pietermaritzburg, 3209, South Africa.
Environ Monit Assess. 2021 Nov 15;193(12):802. doi: 10.1007/s10661-021-09561-6.
The use of neural network (NN) models for remote sensing (RS) retrieval of landscape biophysical and biochemical properties has become popular in the last decade. Recently, the emergence of "big data" that can be generated from remotely sensed data and innovative machine learning (ML) approaches have provided a platform for novel analytical approaches. Specifically, the advent of deep learning (DL) frameworks developed from traditional neural networks (TNN) offer unprecedented opportunities to improve the accuracy of SOC retrievals from remotely sensed imagery. This review highlights the use of TNN models and their evolution into DL architectures in remote sensing of SOC estimation. The review also highlights the application of DL, with a specific focus on its development and adoption in remote sensing of SOC mapping. The review concludes by highlighting future opportunities for the use of DL frameworks for the retrieval of SOC from remotely sensed data.
在过去十年中,神经网络 (NN) 模型在遥感 (RS) 景观生物物理和生化特性反演中的应用变得越来越流行。最近,“大数据”的出现为创新的机器学习 (ML) 方法提供了一个平台,这些方法可以从遥感数据中生成。具体来说,从传统神经网络 (TNN) 发展而来的深度学习 (DL) 框架的出现为提高 SOC 从遥感图像中反演的准确性提供了前所未有的机会。本综述重点介绍了 TNN 模型在 SOC 遥感估算中的应用及其向 DL 架构的演进。该综述还重点介绍了 DL 的应用,特别是其在 SOC 遥感制图中的开发和采用。最后,该综述强调了未来使用 DL 框架从遥感数据中检索 SOC 的机会。