any models of visual performance predict image discriminability, the visibility of the n m difference between a pair of images. We compared the ability of three image discriminatio odels to predict the detectability of objects embedded in natural backgrounds. The three s models were: a multiple channel Cortex transform model with within-channel masking, a ingle channel contrast sensitivity filter model, and a digital image difference metric. Each e d model used a Minkowski distance metric (generalized vector magnitude) to summate absolut ifferences between the background and object plus background images. For each model, this c summation was implemented with three different exponents: 2, 4 and . In addition, each ombination of model and sum...
Adaptive Gaussian mixtures are widely used to model the dynamic background for real-time object dete...
Camouflage is an amazing feat of evolution, but also impressive is the ability of biological visual ...
In this paper we present three error measures based on feature perception models, in which pixel err...
AbstractMany models of visual performance predict image discriminability, the visibility of the diff...
Many investigators are currently developing models to predict human performance in detecting a signa...
Models of human visual detection have been successfully used in computer-generated noise. For these ...
Contrast discrimination determines the threshold contrast required to distinguish between two suprat...
A fundamental visual task is to detect target objects within a background scene. Using relatively s...
e present a simplified dual-channel discrimination model with spatio-temporal filters to represent t...
International audienceEstablishing the relation between perception and discrimination is a fundament...
Studies of visual masking have provided a wide range of important insights into the processes involv...
How different are two images when viewed by a human observer? Such knowledge is needed in many situa...
Detection and tracking of foreground objects in a video scene requires a robust technique for backgr...
Abstract—This paper proposes an algorithm for accurate detection of salient areas from a given scene...
Natural visual scenes are rich in information, and any neural system analysing them must piece toget...
Adaptive Gaussian mixtures are widely used to model the dynamic background for real-time object dete...
Camouflage is an amazing feat of evolution, but also impressive is the ability of biological visual ...
In this paper we present three error measures based on feature perception models, in which pixel err...
AbstractMany models of visual performance predict image discriminability, the visibility of the diff...
Many investigators are currently developing models to predict human performance in detecting a signa...
Models of human visual detection have been successfully used in computer-generated noise. For these ...
Contrast discrimination determines the threshold contrast required to distinguish between two suprat...
A fundamental visual task is to detect target objects within a background scene. Using relatively s...
e present a simplified dual-channel discrimination model with spatio-temporal filters to represent t...
International audienceEstablishing the relation between perception and discrimination is a fundament...
Studies of visual masking have provided a wide range of important insights into the processes involv...
How different are two images when viewed by a human observer? Such knowledge is needed in many situa...
Detection and tracking of foreground objects in a video scene requires a robust technique for backgr...
Abstract—This paper proposes an algorithm for accurate detection of salient areas from a given scene...
Natural visual scenes are rich in information, and any neural system analysing them must piece toget...
Adaptive Gaussian mixtures are widely used to model the dynamic background for real-time object dete...
Camouflage is an amazing feat of evolution, but also impressive is the ability of biological visual ...
In this paper we present three error measures based on feature perception models, in which pixel err...