Remote sensing images are subject to different types of degradations. The visual quality of such images is important because their visual inspection and analysis are still widely used in practice. To characterize the visual quality of remote sensing images, the use of specialized visual quality metrics is desired. Although the attempts to create such metrics are limited, there is a great number of visual quality metrics designed for other applications. Our idea is that some of these metrics can be employed in remote sensing under the condition that those metrics have been designed for the same distortion types. Thus, image databases that contain images with types of distortions that are of interest should be looked for. It has been checked ...
People of all generations are making more and more use of digital imaging systems in their daily liv...
A plethora of image quality metrics have been proposed in the literature. These metrics aims to esti...
Various experimental comparisons of algorithms for supervised classification of remote-sensing image...
Lossy compression can produce false information, such as blockiness, noise, ringing, ghosting, alias...
Objective and effective image quality assessment (IQA) is directly related to the application of opt...
International audienceLossy compression is widely used to decrease the size of multichannel remote s...
Assessing the quality of images is a challenging task. To achieve this goal, images must be evaluate...
Assisted and automated driving (AAD) systems heavily rely on data collected from perception sensors...
An abundance of objective image quality metrics have been introduced in the literature. One importan...
Assessing the quality of images is a challenging task. To achieve this goal, the images must be eval...
This article proposes two reduced reference variance/covariance-based image quality metrics using a ...
A large effort has been made to characterize the image quality of remote sensing systems. One option...
In this paper, a new image database, TID2008, for evaluation of full-reference visual quality assess...
Through the continued development of technology, applying deep learning to remote sensing scene clas...
In the past 20 years a large effort has been made to characterize the image quality of remote sensin...
People of all generations are making more and more use of digital imaging systems in their daily liv...
A plethora of image quality metrics have been proposed in the literature. These metrics aims to esti...
Various experimental comparisons of algorithms for supervised classification of remote-sensing image...
Lossy compression can produce false information, such as blockiness, noise, ringing, ghosting, alias...
Objective and effective image quality assessment (IQA) is directly related to the application of opt...
International audienceLossy compression is widely used to decrease the size of multichannel remote s...
Assessing the quality of images is a challenging task. To achieve this goal, images must be evaluate...
Assisted and automated driving (AAD) systems heavily rely on data collected from perception sensors...
An abundance of objective image quality metrics have been introduced in the literature. One importan...
Assessing the quality of images is a challenging task. To achieve this goal, the images must be eval...
This article proposes two reduced reference variance/covariance-based image quality metrics using a ...
A large effort has been made to characterize the image quality of remote sensing systems. One option...
In this paper, a new image database, TID2008, for evaluation of full-reference visual quality assess...
Through the continued development of technology, applying deep learning to remote sensing scene clas...
In the past 20 years a large effort has been made to characterize the image quality of remote sensin...
People of all generations are making more and more use of digital imaging systems in their daily liv...
A plethora of image quality metrics have been proposed in the literature. These metrics aims to esti...
Various experimental comparisons of algorithms for supervised classification of remote-sensing image...