Abstract

The composition and distribution of wetland vegetation is critical for ecosystem diversity and sustainable development. However, tidal flat wetland environments are complex, and obtaining effective satellite imagery is challenging due to the high cloud coverage. Moreover, it is difficult to acquire phenological feature data and extract species-level wetland vegetation information by using only spectral data or individual images. To solve these limitations, statistical features, temporal features, and phenological features of multiple Landsat 8 time-series images obtained via the Google Earth Engine (GEE) platform were compared to extract species-level wetland vegetation information from Chongming Island, China. The results indicated that (1) a harmonic model obtained the phenological characteristics of wetland vegetation better than the raw vegetation index (VI) and the Savitzky–Golay (SG) smoothing method; (2) classification based on the combination of the three features provided the highest overall accuracy (85.54%), and the phenological features (represented by the amplitude and phase of the harmonic model) had the greatest impact on the classification; and (3) the classification result from the senescence period was more accurate than that from the green period, but the annual mapping result on all seasons was the most accurate. The method described in this study can be applied to overcome the impacts of the complex environment in tidal flat wetlands and to effectively classify wetland vegetation species using GEE. This study could be used as a reference for the analysis of the phenological features of other areas or vegetation types.

Highlights

  • Comparing S. mariqueter and S. alterniflora revealed that the normalized difference vegetation index (NDVI) and soil normalized vegetation index (SAVI)

  • Values of S. alterniflora were always higher than those of S. mariqueter, while the fluctuation ranges of the NDWI1640, NDWI2310, and ratio vegetation index (RVI) values of S. alterniflora were always greater than those of S. mariqueter

  • The combination of the three features provided the best classification of wetland vegetation, reaching a classification accuracy of 85.54%

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Summary

Introduction

Satellite remote sensing images can be used to effectively monitor vegetation types such as forests and cropland [4,5]. The environment of wetland vegetation is complex due to biological invasion of S. alterniflora and the difference in the underlying surface water level, which are known to affect the radiation transfer of the vegetation canopy. Many studies have focused on extraction of wetland vegetation information through remote sensing classification methods and data sources [6,7,8], but most of these classifications have been based on single images rather than considering a time series of images. How to effectively extract vegetation information and obtain reliable mapping results from remote sensing images in complex wetland environments is a problem that remains to be solved

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