Estimation of noise contained within a remote sensing image is often a prerequisite to dealing with the deleterious effects of noise on the signal. Image based methods to estimate noise are attractive to researchers for a range of applications because they are in many cases automatic and do not depend on external data or laboratory measurement. In this paper, the geostatistical method for estimating image noise was applied to Compact Airborne Spectrographic Imager (CASI) imagery. Three CASI wavebands (0.46–0.49 μm (blue), 0.63–0.64 μm (red), 0.70–0.71 μm (near-infrared)) and four land covers (coniferous woodland, grassland, heathland and deciduous woodland) were selected for analysis. Five sub-images were identified per land cover resulting...
The goal was to quantitatively estimate and compare the fidelity of images acquired with a digital i...
Predictive modeling with remotely sensed data requires an accurate representation of spatial variabi...
Remotely sensed data are often adversely affected by many types of noise, which influences the class...
Estimation of noise contained within a remote sensing image is often a prerequisiteto dealing with t...
The signal-to-noise ratio (SNR) of remotely sensed imagery has been estimated directly using a varie...
The signal-to-noise ratio (SNR) has been estimated for remotely sensed imagery using several image-b...
Land cover maps are typically derived through classification of remotely-sensed data, usually relyin...
The maximum information obtainable from an image is limited primarily by the quality of the data. Th...
One factor limiting the accuracy of land cover maps derived from classified, remotely-sensed imagery...
Abstract—Noise can be introduced into remote sensing data by the sensor. Noise estimation is a key p...
Noisy observations form the basis for almost every scientific research and especially in environment...
The definition of noise models suitable for hyperspectral data is slightly different depending on wh...
Previously, several methods have been developed to estimate the signal-to-noise ratio of remotely se...
Abstract—In the traditional signal model, signal is assumed to be deterministic, and noise is assume...
A dissertation submitted to the Faculty of Science, University of the Witwatersrand, Johannesburg, i...
The goal was to quantitatively estimate and compare the fidelity of images acquired with a digital i...
Predictive modeling with remotely sensed data requires an accurate representation of spatial variabi...
Remotely sensed data are often adversely affected by many types of noise, which influences the class...
Estimation of noise contained within a remote sensing image is often a prerequisiteto dealing with t...
The signal-to-noise ratio (SNR) of remotely sensed imagery has been estimated directly using a varie...
The signal-to-noise ratio (SNR) has been estimated for remotely sensed imagery using several image-b...
Land cover maps are typically derived through classification of remotely-sensed data, usually relyin...
The maximum information obtainable from an image is limited primarily by the quality of the data. Th...
One factor limiting the accuracy of land cover maps derived from classified, remotely-sensed imagery...
Abstract—Noise can be introduced into remote sensing data by the sensor. Noise estimation is a key p...
Noisy observations form the basis for almost every scientific research and especially in environment...
The definition of noise models suitable for hyperspectral data is slightly different depending on wh...
Previously, several methods have been developed to estimate the signal-to-noise ratio of remotely se...
Abstract—In the traditional signal model, signal is assumed to be deterministic, and noise is assume...
A dissertation submitted to the Faculty of Science, University of the Witwatersrand, Johannesburg, i...
The goal was to quantitatively estimate and compare the fidelity of images acquired with a digital i...
Predictive modeling with remotely sensed data requires an accurate representation of spatial variabi...
Remotely sensed data are often adversely affected by many types of noise, which influences the class...