4.7 Review

Review of Remote Sensing Applications in Grassland Monitoring

Journal

REMOTE SENSING
Volume 14, Issue 12, Pages -

Publisher

MDPI
DOI: 10.3390/rs14122903

Keywords

grassland remote sensing; parameter estimation; land degradation monitoring; grassland use; disaster monitoring; carbon cycle

Funding

  1. National Natural Science Foundation of China [61201421]
  2. National cryosphere desert data center [E01Z7902]
  3. Chinese Academy of Sciences [Y9298302]

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The paper provides a comprehensive review of the application of remote sensing technology in grassland monitoring and management. It discusses the estimation methods for various grassland parameters and reviews the applications of remote sensing monitoring, including grassland degradation, grassland use, disaster monitoring, and carbon cycle monitoring. The study suggests that advanced estimation methods and deep learning should be explored in future research.
The application of remote sensing technology in grassland monitoring and management has been ongoing for decades. Compared with traditional ground measurements, remote sensing technology has the overall advantage of convenience, efficiency, and cost effectiveness, especially over large areas. This paper provides a comprehensive review of the latest remote sensing estimation methods for some critical grassland parameters, including above-ground biomass, primary productivity, fractional vegetation cover, and leaf area index. Then, the applications of remote sensing monitoring are also reviewed from the perspective of their use of these parameters and other remote sensing data. In detail, grassland degradation and grassland use monitoring are evaluated. In addition, disaster monitoring and carbon cycle monitoring are also included. Overall, most studies have used empirical models and statistical regression models, while the number of machine learning approaches has an increasing trend. In addition, some specialized methods, such as the light use efficiency approaches for primary productivity and the mixed pixel decomposition methods for vegetation coverage, have been widely used and improved. However, all the above methods have certain limitations. For future work, it is recommended that most applications should adopt the advanced estimation methods rather than simple statistical regression models. In particular, the potential of deep learning in processing high-dimensional data and fitting non-linear relationships should be further explored. Meanwhile, it is also important to explore the potential of some new vegetation indices based on the spectral characteristics of the specific grassland under study. Finally, the fusion of multi-source images should also be considered to address the deficiencies in information and resolution of remote sensing images acquired by a single sensor or satellite.

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