This slide presentation reviews some of the issues in quality of remote sensing data. Data "quality" is used in several different contexts in remote sensing data, with quite different meanings. At the pixel level, quality typically refers to a quality control process exercised by the processing algorithm, not an explicit declaration of accuracy or precision. File level quality is usually a statistical summary of the pixel-level quality but is of doubtful use for scenes covering large areal extents. Quality at the dataset or product level, on the other hand, usually refers to how accurately the dataset is believed to represent the physical quantities it purports to measure. This assessment often bears but an indirect relationship at best to...
Today, validation or accuracy assessment is an integral component of most mapping projects incorpora...
In the past 20 years a large effort has been made to characterize the image quality of remote sensin...
Ground reference data are typically required to evaluate the quality of a supervised image classific...
International audienceRemote sensing datasets are characterized by multiple types of imperfections t...
The availability and accessibility of remote sensing (RS) data, cloud processing platforms and provi...
The technological developments in remote sensing (RS) during the past decade has contributed to a si...
The availability and accessibility of remote sensing (RS) data, cloud processing platforms and provi...
We developed a suite of quality metrics that characterize the annual and year-to-year frequency of s...
Remote sensing images are subject to different types of degradations. The visual quality of such ima...
NASA provides a wide variety of Earth-observing satellite data products to a diverse community. Thes...
The scale of remote sensing data used in the photo-interpretation represents only the level of detai...
A large effort has been made to characterize the image quality of remote sensing systems. One option...
Abstract. The aim of this paper is to review standard methods for assessing the quality control of c...
The roles of quantitative remote sensing products in scientific research and quantitative applicatio...
The increasing use of products based on airborne hyperspectral data for decision-making calls for a ...
Today, validation or accuracy assessment is an integral component of most mapping projects incorpora...
In the past 20 years a large effort has been made to characterize the image quality of remote sensin...
Ground reference data are typically required to evaluate the quality of a supervised image classific...
International audienceRemote sensing datasets are characterized by multiple types of imperfections t...
The availability and accessibility of remote sensing (RS) data, cloud processing platforms and provi...
The technological developments in remote sensing (RS) during the past decade has contributed to a si...
The availability and accessibility of remote sensing (RS) data, cloud processing platforms and provi...
We developed a suite of quality metrics that characterize the annual and year-to-year frequency of s...
Remote sensing images are subject to different types of degradations. The visual quality of such ima...
NASA provides a wide variety of Earth-observing satellite data products to a diverse community. Thes...
The scale of remote sensing data used in the photo-interpretation represents only the level of detai...
A large effort has been made to characterize the image quality of remote sensing systems. One option...
Abstract. The aim of this paper is to review standard methods for assessing the quality control of c...
The roles of quantitative remote sensing products in scientific research and quantitative applicatio...
The increasing use of products based on airborne hyperspectral data for decision-making calls for a ...
Today, validation or accuracy assessment is an integral component of most mapping projects incorpora...
In the past 20 years a large effort has been made to characterize the image quality of remote sensin...
Ground reference data are typically required to evaluate the quality of a supervised image classific...