A comparison of the performance of three feature extraction methods was made for mapping forest crown closure (CC) and leaf area index (LAI) with EO-1 Hyperion data. The methods are band selection (SB), principal component analysis (PCA) and wavelet transform (WT). Hyperion data were acquired on October 9, 2001. A total of 38 field measurements of CC and LAI were collected on August 10–11, 2001, at Blodgett Forest Research Station, University of California at Berkeley, USA. The analysis method consists of (1) conducting atmospheric correction with High Accuracy Atmospheric Correction for Hyperspectral Data (HATCH) to retrieve surface reflectance, (2) extracting features with the three methods: SB, PCA and WT, (3) establishing multivariate r...
A dataset of spectral signatures (leaf level) of tropical dry forest trees and lianas and an airborn...
This paper presents a simple but effective method to identify and map the distribution of vegetation...
The forest canopy leaf area index (LAI) is an important structural variable directly affecting funct...
A comparison of the performance of three feature extraction methods was made for mapping forest crow...
In this study, a comparative analysis of capabilities of three sensors for mapping forest crown clos...
In this study, mixed coniferous forest crown closure (CC) and leaf area index (LAI) were measured at...
used for estimation of CC and LAI. A total of 38 forest CC and LAI measurements were used in this co...
We compare the inversion of two canopy reflectance models to estimate forest crown closure (CC) usin...
Leaf area index (LAI) estimates collected from a Ponderosa pine stand in Oregon were correlated with...
schlerf(at)uni-trier.de This study evaluated systematically linear predictive models between vegetat...
The use of spectral features to estimate leaf area index (LAI) is generally considered a challenging...
The leaf area index (LAI) of plant canopies is an important structural parameter that controls energ...
Abstract—A correlation analysis was conducted between forest leaf area index (LAI) and two red edge ...
Rapid advancement in remote sensing open new avenues to explore the hyperspectral Hyperion imagery p...
In this article, the capability of discrete wavelet transform (DWT) to discriminate tree species wit...
A dataset of spectral signatures (leaf level) of tropical dry forest trees and lianas and an airborn...
This paper presents a simple but effective method to identify and map the distribution of vegetation...
The forest canopy leaf area index (LAI) is an important structural variable directly affecting funct...
A comparison of the performance of three feature extraction methods was made for mapping forest crow...
In this study, a comparative analysis of capabilities of three sensors for mapping forest crown clos...
In this study, mixed coniferous forest crown closure (CC) and leaf area index (LAI) were measured at...
used for estimation of CC and LAI. A total of 38 forest CC and LAI measurements were used in this co...
We compare the inversion of two canopy reflectance models to estimate forest crown closure (CC) usin...
Leaf area index (LAI) estimates collected from a Ponderosa pine stand in Oregon were correlated with...
schlerf(at)uni-trier.de This study evaluated systematically linear predictive models between vegetat...
The use of spectral features to estimate leaf area index (LAI) is generally considered a challenging...
The leaf area index (LAI) of plant canopies is an important structural parameter that controls energ...
Abstract—A correlation analysis was conducted between forest leaf area index (LAI) and two red edge ...
Rapid advancement in remote sensing open new avenues to explore the hyperspectral Hyperion imagery p...
In this article, the capability of discrete wavelet transform (DWT) to discriminate tree species wit...
A dataset of spectral signatures (leaf level) of tropical dry forest trees and lianas and an airborn...
This paper presents a simple but effective method to identify and map the distribution of vegetation...
The forest canopy leaf area index (LAI) is an important structural variable directly affecting funct...