4.7 Article

Combining Sentinel-1 and-3 Imagery for Retrievals of Regional Multitemporal Biophysical Parameters Under a Deep Learning Framework

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSTARS.2022.3200735

关键词

Crops; Synthetic aperture radar; Monitoring; Remote sensing; Optical sensors; Optical imaging; Optical polarization; Canopy chlorophyll content; deep learning; leaf area index; multitemporal monitoring; sentinel-1 and-3

资金

  1. National Natural Science Foundation of China [42171332, 41871336]
  2. U.K. Research and Innovation funding from a Science and Technology Facilities Council [SM008 CAU]
  3. Royal Society-Newton Mobility grant

向作者/读者索取更多资源

This article proposes a new method for estimating the leaf area index and canopy chlorophyll content of winter wheat using a combined SAR and optical imagery approach. The results show that this method is more accurate than traditional machine learning models, particularly during the green-up stage of winter wheat.
Regions with excessive cloud cover lead to limited feasibility of applying optical images to monitor crop growth. In this article, we built an upsampling moving window network for regional crop growth monitoring (UMRCGM) model to estimate the two key biophysical parameters (BPs), leaf area index (LAI), and canopy chlorophyll content (CCC) during the main growth period of winter wheat by using Sentinel-1 Synthetic Aperture Radar (SAR) and Sentinel-3 optical images. Sentinel-1 imagery is unaffected by cloudy weather and Sentinel-3 imagery has a wide width and short revisit period, the organic combination of the two will greatly improve the ability to monitor crop growth at a regional scale. The impact of two different types of SAR information (intensity and polarization) on the estimation of the two BPs was further analyzed. The UMRCGM model optimized the correspondence between inputs and outputs, it had more accurate LAI and CCC estimates compared with the three classical machine learning models, and had the highest accuracy at the green-up stage of winter wheat, followed by the jointing stage and the heading-filling stage, and the lowest accuracy was found at the milk maturity stage. The estimation accuracies of CCC were slightly higher than that of LAI for the first three growth stages of winter wheat, while lower than that of LAI for the milk maturity stage. This article proposes a new method for regional BPs (especially for CCC) estimation by combining SAR and optical imagery with large differences in spatial resolution under a deep learning framework.

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