4.7 Article

Small Footprint Full-Waveform Metrics Contribution to the Prediction of Biomass in Tropical Forests

期刊

REMOTE SENSING
卷 6, 期 10, 页码 9576-9599

出版社

MDPI
DOI: 10.3390/rs6109576

关键词

biomass; forest; LiDAR; full-waveform; basal area

资金

  1. ERC grant Africa GHG [247349]
  2. European Research Council (ERC) [247349] Funding Source: European Research Council (ERC)

向作者/读者索取更多资源

We tested metrics from full-waveform (FW) LiDAR (light detection and ranging) as predictors for forest basal area (BA) and aboveground biomass (AGB), in a tropical moist forest. Three levels of metrics are tested: (i) peak-level, based on each return echo; (ii) pulse-level, based on the whole return signal from each emitted pulse; and (iii) plot-level, simulating a large footprint LiDAR dataset. Several of the tested metrics have significant correlation, with two predictors, found by stepwise regression, in particular: median distribution of the height above ground (nZ(median)) and fifth percentile of total pulse return intensity (i_tot(5th)). The former contained the most information and explained 58% and 62% of the variance in AGB and BA values; stepwise regression left us with two and four predictors, respectively, explaining 65% and 79% of the variance. For BA, the predictors were standard deviation, median and fifth percentile of total return pulse intensity (i_tot(stdDev), i_tot(median) and i_tot(5th)) and nZ(median), whereas for AGB, only the last two were used. The plot-based metric showed that the median height of echo count (HOMTC) performs best, with very similar results as nZ(median), as expected. Cross-validation allowed the analysis of residuals and model robustness. We discuss our results considering our specific case scenario of a complex forest structure with a high degree of variability in terms of biomass.

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