4.7 Article

Vegetation Characterization through the Use of Precipitation-Affected SAR Signals

期刊

REMOTE SENSING
卷 10, 期 10, 页码 -

出版社

MDPI
DOI: 10.3390/rs10101647

关键词

SAR signals; precipitation; vegetation classification; soil type; incidence angle

资金

  1. SURF Cooperative
  2. SURFsara
  3. BE-Basic FAPESP [2013/50943-9]
  4. BE-Basic Project [FES0905]

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Current space-based SAR offers unique opportunities to classify vegetation types and to monitor vegetation growth due to its frequent acquisitions and its sensitivity to vegetation geometry. However, SAR signals also experience frequent temporal fluctuations caused by precipitation events, complicating the mapping and monitoring of vegetation. In this paper, we show that the influence of a priori known precipitation events on the signals can be used advantageously for the classification of vegetation conditions. For this, we exploit the change in Sentinel-1 backscatter response between consecutive acquisitions under varying wetness conditions, which we show is dependent on the state of vegetation. The performance further improves when a priori information on the soil type is taken into account.

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