Developing a robust computer vision algorithm is very difficult because of the enormous variation of visual conditions. A systems technology solution to this challenge is an automatic selection and configuration of different existing algorithms according to the task and context of arbitrary applications. This paper presents a first attempt to generate the required mapping between the task/context to the optimal algorithm and algorithm configuration. This mapping is based on an extensive performance evaluation. To practically handle the exhaustive search for optimal solutions a new optimization challenge the Multiple-Multi Objective Optimization (M-MOP) and an according solution based on genetic algorithms is developed and evaluated. The res...
This thesis deals with methods for optimization in image processing. There is described some of opti...
International audienceMany works in the literature focus on the definition of evaluation metrics and...
Multimodal Sensor Vision is a technique for detecting objects in dynamic and uncertain environmental...
Developing a robust computer vision algorithm is very difficult because of the enormous variation of...
The process of stereo vision matches one or more images to recover the depth information of the pict...
Local parallel processes are a very efficient way of using contextual information in a very large cl...
Given an image, there is no unique measure to quantitatively judge the quality of an image enhanceme...
Evolutionary algorithms (EAs) and swarm algorithms (SAs) have shown their usefulness in solving comb...
This book presents a study of the use of optimization algorithms in complex image processing problem...
In image generation, where diversity is critical, people can express their preferences by choosing a...
Genetic algorithms represent a class of highly parallel adaptive search processes for solving a wide...
A wide array of problems in Visual Computing can be naturally formulated as optimization tasks. In t...
Until now there have been few formalized methods for conducting systematic benchmarking aiming at re...
A fully integrated development tool for computer vision systems has been built in the framework of t...
In the literature, several works focal point on the description of contrast metrics and standards th...
This thesis deals with methods for optimization in image processing. There is described some of opti...
International audienceMany works in the literature focus on the definition of evaluation metrics and...
Multimodal Sensor Vision is a technique for detecting objects in dynamic and uncertain environmental...
Developing a robust computer vision algorithm is very difficult because of the enormous variation of...
The process of stereo vision matches one or more images to recover the depth information of the pict...
Local parallel processes are a very efficient way of using contextual information in a very large cl...
Given an image, there is no unique measure to quantitatively judge the quality of an image enhanceme...
Evolutionary algorithms (EAs) and swarm algorithms (SAs) have shown their usefulness in solving comb...
This book presents a study of the use of optimization algorithms in complex image processing problem...
In image generation, where diversity is critical, people can express their preferences by choosing a...
Genetic algorithms represent a class of highly parallel adaptive search processes for solving a wide...
A wide array of problems in Visual Computing can be naturally formulated as optimization tasks. In t...
Until now there have been few formalized methods for conducting systematic benchmarking aiming at re...
A fully integrated development tool for computer vision systems has been built in the framework of t...
In the literature, several works focal point on the description of contrast metrics and standards th...
This thesis deals with methods for optimization in image processing. There is described some of opti...
International audienceMany works in the literature focus on the definition of evaluation metrics and...
Multimodal Sensor Vision is a technique for detecting objects in dynamic and uncertain environmental...