Remote Sensing (Apr 2024)

A Hybrid Index for Monitoring Burned Vegetation by Combining Image Texture Features with Vegetation Indices

  • Jiahui Fan,
  • Yunjun Yao,
  • Qingxin Tang,
  • Xueyi Zhang,
  • Jia Xu,
  • Ruiyang Yu,
  • Lu Liu,
  • Zijing Xie,
  • Jing Ning,
  • Luna Zhang

DOI
https://doi.org/10.3390/rs16091539
Journal volume & issue
Vol. 16, no. 9
p. 1539

Abstract

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The detection and monitoring of burned areas is crucial for vegetation recovery, loss assessment, and anomaly analysis. Although vegetation indices (VIs) have been widely used, accurate vegetation detection is challenging due to potential confusion in the spectra of different types of land cover and the interference of shadow effects caused by terrain. In this work, a novel Vegetation Anomaly Spectral Texture Index (VASTI) is proposed, which leverages the merits of both spectral and spatial texture features to identify abnormal pixels for extracting burned vegetation areas. The performance of the VASTI and its components, the Global Environmental Monitoring Index (GEMI), the Enhanced Vegetation Index (EVI), and the texture feature Autocorrelation (AC) were assessed based on a global dataset previously established, which contains 1774 pairs of samples from 10 different sites. The results illustrated that, compared with the GEMI and EVI, the VASTI improved the user’s accuracy (UA), producer’s accuracy (PA), and kappa coefficient across the ten study areas by approximately 5% to 10%. Compared to AC, the VASTI improved the accuracy of abnormal vegetation detection by 13% to 25%. The improvements were mainly caused by the fact that the incorporation of texture features can reduce spectral confusion between pixels. The innovation of the VASTI is that it considers the relationship between anomalous pixels and surrounding pixels by explicitly integrating spatial texture features with traditional spectral features.

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