A computational model of the processes involved in multispectral remote sensing and data classification is developed as a tool for designing smart sensors which can process, edit, and classify the data that they acquire. An evaluation of sensor system performance and design tradeoffs involves classification rates and errors as a function of number and location of spectral channels, radiometric sensitivity and calibration accuracy, target discrimination assignments, and accuracy and frequency of compensation for imaging conditions. This model provides a link between the radiometric and statistical properties of the signals to be classified and the performance characteristics of electro-optical sensors and data processing devices. Preliminary...
This study evaluates a series of atmospheric correction techniques developed at RIT called Total Inv...
Efficient acquisition and utilization of remotely sensed data requires an extensive a priori evaluat...
Efficient acquisition and utilization of remotely sensed data requires an extensive a priori evaluat...
The design and development of multispectral remote sensor systems and associated information extract...
The image classification procedure to identify remote sensing signatures from a particular geographi...
The image classification procedure to identify remote sensing signatures from a particular geographi...
A computational model of the deterministic and stochastic processes involved in multispectral remote...
There are many factors which reduce the accuracy of classification of objects in the satellite remot...
Two parallel and overlapping approaches to classification of remotely sensed data with the aid of sp...
Earth observation is the field of science concerned with the problem of monitoring and modeling the ...
Research in multispectral data processing at LARS/Purdue is directed at supporting a substantial lev...
Research in multispectral data processing at LARS/Purdue is directed at supporting a substantial lev...
Recent improvements in remote sensor technology carry implications for data processing. Multispectra...
This paper is a general discussion of earth resources information systems which utilize airborne and...
This paper is a general discussion of earth resources information systems which utilize airborne and...
This study evaluates a series of atmospheric correction techniques developed at RIT called Total Inv...
Efficient acquisition and utilization of remotely sensed data requires an extensive a priori evaluat...
Efficient acquisition and utilization of remotely sensed data requires an extensive a priori evaluat...
The design and development of multispectral remote sensor systems and associated information extract...
The image classification procedure to identify remote sensing signatures from a particular geographi...
The image classification procedure to identify remote sensing signatures from a particular geographi...
A computational model of the deterministic and stochastic processes involved in multispectral remote...
There are many factors which reduce the accuracy of classification of objects in the satellite remot...
Two parallel and overlapping approaches to classification of remotely sensed data with the aid of sp...
Earth observation is the field of science concerned with the problem of monitoring and modeling the ...
Research in multispectral data processing at LARS/Purdue is directed at supporting a substantial lev...
Research in multispectral data processing at LARS/Purdue is directed at supporting a substantial lev...
Recent improvements in remote sensor technology carry implications for data processing. Multispectra...
This paper is a general discussion of earth resources information systems which utilize airborne and...
This paper is a general discussion of earth resources information systems which utilize airborne and...
This study evaluates a series of atmospheric correction techniques developed at RIT called Total Inv...
Efficient acquisition and utilization of remotely sensed data requires an extensive a priori evaluat...
Efficient acquisition and utilization of remotely sensed data requires an extensive a priori evaluat...