Abstract: It is common in hyperspectral remote sensing studies to perform analysis based on derivative spectroscopy. However, this technique is particularly sensitive to noise in the data. Thus, noise removal is essential before any derivative analysis. Various methods of noise removal are described in the literature. A newly developed method based on the wavelet transform appears promising, though there is little practical guidance on its use. In this study, the investigation of several important parameters that govern Wavelet-Based Denoising (WBD) is undertaken. The optimal parameter settings are then evaluated for use in spectral analysis using field Spectroradiometer hyperspectral data
Hyperspectral imaging (HSI) has become an essential tool for exploration of different spatially-reso...
<p> The existence of noise in hyperspectral imagery (HSI) seriously affects image quality. Noise re...
The wavelet representation of a signal offers greater flexibility in de-noising astronomical spectra...
Part 1: GIS, GPS, RS and Precision FarmingInternational audienceThe imaging hyper-spectrometer is hi...
Many of vegetation studies make use of the vegetation reflectance spectra acquired by hyperspectral ...
Remote sensor technology has encouraged series of research work in the area of signal and image proc...
A study of wavelet denoising on hyperspectral reflectance data, specifically the red edge position (...
In this paper, a new denoising method is proposed for hyperspectral remote sensing images, and teste...
Hyperspectral vegetation spectrum is normally contaminated with noise and the presence of noise affe...
The use of hyperspectral sensors has gained relevance in agriculture due to its potential in the phy...
Hyperspectral remote sensing image is easily contaminated by noise, which will affect the applicatio...
Hyperspectral remote sensing is based on measuring the scattered and reflected electromagnetic signa...
Noise estimation of hyperspectral remote sensing image is important for its post-processing and appl...
Spectral unmixing and denoising of hyperspectral images have always been regarded as separate proble...
A method for preconditioning vegetation reflectance spectra prior to applying wavelet denoising meth...
Hyperspectral imaging (HSI) has become an essential tool for exploration of different spatially-reso...
<p> The existence of noise in hyperspectral imagery (HSI) seriously affects image quality. Noise re...
The wavelet representation of a signal offers greater flexibility in de-noising astronomical spectra...
Part 1: GIS, GPS, RS and Precision FarmingInternational audienceThe imaging hyper-spectrometer is hi...
Many of vegetation studies make use of the vegetation reflectance spectra acquired by hyperspectral ...
Remote sensor technology has encouraged series of research work in the area of signal and image proc...
A study of wavelet denoising on hyperspectral reflectance data, specifically the red edge position (...
In this paper, a new denoising method is proposed for hyperspectral remote sensing images, and teste...
Hyperspectral vegetation spectrum is normally contaminated with noise and the presence of noise affe...
The use of hyperspectral sensors has gained relevance in agriculture due to its potential in the phy...
Hyperspectral remote sensing image is easily contaminated by noise, which will affect the applicatio...
Hyperspectral remote sensing is based on measuring the scattered and reflected electromagnetic signa...
Noise estimation of hyperspectral remote sensing image is important for its post-processing and appl...
Spectral unmixing and denoising of hyperspectral images have always been regarded as separate proble...
A method for preconditioning vegetation reflectance spectra prior to applying wavelet denoising meth...
Hyperspectral imaging (HSI) has become an essential tool for exploration of different spatially-reso...
<p> The existence of noise in hyperspectral imagery (HSI) seriously affects image quality. Noise re...
The wavelet representation of a signal offers greater flexibility in de-noising astronomical spectra...