This paper examines the effects on timber stand computer classification accuracies caused by changes in the resolution of remotely sensed multispectral data. This investigation is valuable, especially for determining optimal sensor and platform designs. Theoretical justification and experimental verification support the finding that classification accuracies for low resolution data could be better than the accuracies for data with higher resolution. The increase in accuracy is construed as due to the reduction of scene inhomogeneity at lower resolution. The computer classification scheme was a maximum likelihood classifier
The optimal computational capability for analyzing multispectral aerial images e.g. for fine-scale t...
Effective management of forest resources requires reliable and timely information on their status. I...
This viewgraph presentation reviews the findings of a study that asks is 8 bits enough to obtain for...
Inappropriate spatial resolution and corresponding data processing techniques may be major causes fo...
Remote sensing in forestry has always provided a severe challenge to the sensor/platform hardware. I...
The prime objective of this study was to propose and test a method to identify the optimal spatial r...
New England forest complexity creates obstacles for land cover classification using satellite imager...
The 42.5 microradian angular IFOV of the Thematic Mapper will provide a linear spatial resolution of...
Advancements in technology have led to development of various new sensors and platforms. Among them,...
In recent decades, remote sensing techniques and the associated hardware and software have made subs...
Remote sensing of forest and nonforest land classes are discussed, using microscale photointerpretat...
The National Institute of Standards and Technology data science evaluation plant identification chal...
In order to aid federal agencies and private companies in the ever-growing problem of invasive speci...
[Departement_IRSTEA]GT [TR1_IRSTEA]GT1-Relations entre les écosystèmes et leur utilisationNational a...
Information and knowledge about a given forested landscape drives forest management decisions. Withi...
The optimal computational capability for analyzing multispectral aerial images e.g. for fine-scale t...
Effective management of forest resources requires reliable and timely information on their status. I...
This viewgraph presentation reviews the findings of a study that asks is 8 bits enough to obtain for...
Inappropriate spatial resolution and corresponding data processing techniques may be major causes fo...
Remote sensing in forestry has always provided a severe challenge to the sensor/platform hardware. I...
The prime objective of this study was to propose and test a method to identify the optimal spatial r...
New England forest complexity creates obstacles for land cover classification using satellite imager...
The 42.5 microradian angular IFOV of the Thematic Mapper will provide a linear spatial resolution of...
Advancements in technology have led to development of various new sensors and platforms. Among them,...
In recent decades, remote sensing techniques and the associated hardware and software have made subs...
Remote sensing of forest and nonforest land classes are discussed, using microscale photointerpretat...
The National Institute of Standards and Technology data science evaluation plant identification chal...
In order to aid federal agencies and private companies in the ever-growing problem of invasive speci...
[Departement_IRSTEA]GT [TR1_IRSTEA]GT1-Relations entre les écosystèmes et leur utilisationNational a...
Information and knowledge about a given forested landscape drives forest management decisions. Withi...
The optimal computational capability for analyzing multispectral aerial images e.g. for fine-scale t...
Effective management of forest resources requires reliable and timely information on their status. I...
This viewgraph presentation reviews the findings of a study that asks is 8 bits enough to obtain for...