It has been widely certified that hyperspectral images can be effectively used to monitor soil organic matter (SOM). Though numerous bands reveal more details in spectral features, information redundancy and noise interference also come accordingly. Due to the fact that, nowadays, prevailing dimensionality reduction methods targeted to hyperspectral images fail to make effective band selections, it is hard to capture the spectral features of ground objects quickly and accurately. In this paper, to solve the inefficiency and instability of hyperspectral feature selection, we proposed a feature selection framework named reinforcement learning for feature selection in hyperspectral regression (RLFSR). Specifically, the Markov Decision Process ...
Hyperspectral imagery generates huge data volumes, consist-ing of hundreds of contiguous and often h...
Many methods based on radiative-transfer models and empirical approaches with prior knowledge have b...
This study analyzed highly correlated, feature-rich datasets from hyperspectral remote sensing data ...
Band selection refers to the process of choosing the most relevant bands in a hyperspectral image. B...
Effective soil spectral band selection and modeling methods can improve modeling accuracy. To establ...
Soil organic matter (SOM) is an essential nutrient for crop growth and development. Hyperspectral sa...
The AI4EO Hyperview challenge seeks machine learning methods that predict agriculturally relevant so...
In order to improve the signal-to-noise ratio of the hyperspectral sensors and exploit the potential...
Abstract—Hyperspectral images have been proved to be effec-tive for a wide range of applications; ho...
AbstractWith the development of hyperspectral remote sensing technology, the spectral resolution of ...
With success of Deep Belief Networks (DBNs) in computer vision, DBN has attracted great attention in...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
To overcome the difficulty of automating and intelligently classifying the ground features in remote...
Hyperspectral image classification has always been a hot topic. The problem of "dimension disaster" ...
Due to their similar color and material variability, some ground objects have similar characteristic...
Hyperspectral imagery generates huge data volumes, consist-ing of hundreds of contiguous and often h...
Many methods based on radiative-transfer models and empirical approaches with prior knowledge have b...
This study analyzed highly correlated, feature-rich datasets from hyperspectral remote sensing data ...
Band selection refers to the process of choosing the most relevant bands in a hyperspectral image. B...
Effective soil spectral band selection and modeling methods can improve modeling accuracy. To establ...
Soil organic matter (SOM) is an essential nutrient for crop growth and development. Hyperspectral sa...
The AI4EO Hyperview challenge seeks machine learning methods that predict agriculturally relevant so...
In order to improve the signal-to-noise ratio of the hyperspectral sensors and exploit the potential...
Abstract—Hyperspectral images have been proved to be effec-tive for a wide range of applications; ho...
AbstractWith the development of hyperspectral remote sensing technology, the spectral resolution of ...
With success of Deep Belief Networks (DBNs) in computer vision, DBN has attracted great attention in...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
To overcome the difficulty of automating and intelligently classifying the ground features in remote...
Hyperspectral image classification has always been a hot topic. The problem of "dimension disaster" ...
Due to their similar color and material variability, some ground objects have similar characteristic...
Hyperspectral imagery generates huge data volumes, consist-ing of hundreds of contiguous and often h...
Many methods based on radiative-transfer models and empirical approaches with prior knowledge have b...
This study analyzed highly correlated, feature-rich datasets from hyperspectral remote sensing data ...