小波
遥感
多光谱图像
小波变换
环境科学
阈值
生物系统
材料科学
计算机科学
人工智能
地质学
生物
图像(数学)
作者
Eva Ampe,Erin L. Hestir,Mariano Bresciani,Elga Salvadore,Vittorio Brando,Arnold G. Dekker,Tim Malthus,Maarten Jansen,Ludwig Triest,Okke Batelaan
标识
DOI:10.1109/lgrs.2013.2247021
摘要
This letter presents an application of continuous wavelet analysis, providing a new semi-empirical approach to estimate Chlorophyll-A (Chl-A) in optically complex inland waters. Traditionally spectral narrow band ratios have been used to quantify key diagnostic features in the remote sensing signal to estimate concentrations of optically active water quality constituents. However, they cannot cope easily with shifts in reflectance features caused by multiple interactions between variable absorption and backscattering effects that typically occur in optically complex waters. We use continuous wavelet analysis to detect Chl-A features at various wavelengths and frequency scales. Using the wavelet decomposition, we build a 2-D correlation scalogram between in situ pond reflectance spectra and in situ Chl-A concentration. By isolating the most informative wavelet regions via thresholding, we could relate all five regions to known inherent optical properties. We select the optimal feature per region and compare them to three well-known narrow band ratio models. For this experimental application, the wavelet features outperform the NIR-red models, while fluorescence line height (FLH) yield comparable results. Because wavelets analyze the signal at different scales and synthesize information across bands, we hypothesize that the wavelet features are less sensitive to confounding factors, such as instrument noise, colored dissolved organic matter, and suspended matter. © 2004-2012 IEEE.
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