Abstract− − In this paper, a systematic discussion of both pros and cons of two well-known traditional approaches for image contrast enhancement is conducted. The first approach is based on the CNN paradigm and the second one is based on the coupled nonlinear oscillators ’ paradigm for image processing. In the later case an extensive bifurcation analysis is carried out and analytical formulas are derived to define the various states of the system. Both equilibrium and oscillatory states of the system are depicted. It is shown that each of these states has a significant impact on the quality of the resulting image contrast enhancement. A benchmarking is considered whereby a comparison is performed between the results obtained by a CNN-based ...
A new approach for maximum posterior probability (MAP) image restoration based on cellular neural ne...
Abstract – A simple contribution to spatial novelty detection in stereo-vision systems for mobile ve...
: In this paper, we develop a common cellular neural network framework for various adaptive nonline...
International audienceA cellular nonlinear network (CNN) based on uncoupled nonlinear oscillators is...
A Cellular Nonlinear Network (CNN) based on uncoupled nonlinear oscillators is proposed for image pr...
International audienceWe have recently proposed a Cellular Nonlinear Network (CNN) based on nonlinea...
We have recently proposed a Cellular Nonlinear Network (CNN) based on nonlinear oscillator proper-ti...
Image restoration is a process that restores a degraded image to its original or near original form....
Today, the use of convolutional neural network models for deep learning in the field of image proces...
In this paper the minimization of a functional defined in the context of biomedical image processing...
Abstract- When low-level hardware simulations of cellular neural networks (CNN’s) are very costly fo...
Abstract In this research, we propose cellular neural networks using mixture template as an example ...
Abstract—In this paper, we research the combination of two neurons in the Cellular Neural Networks (...
Abstract—Image-analysis algorithms are of great interest in the context of object-oriented coding sc...
Abstract — In this research, we propose an image processing application using cellular neural networ...
A new approach for maximum posterior probability (MAP) image restoration based on cellular neural ne...
Abstract – A simple contribution to spatial novelty detection in stereo-vision systems for mobile ve...
: In this paper, we develop a common cellular neural network framework for various adaptive nonline...
International audienceA cellular nonlinear network (CNN) based on uncoupled nonlinear oscillators is...
A Cellular Nonlinear Network (CNN) based on uncoupled nonlinear oscillators is proposed for image pr...
International audienceWe have recently proposed a Cellular Nonlinear Network (CNN) based on nonlinea...
We have recently proposed a Cellular Nonlinear Network (CNN) based on nonlinear oscillator proper-ti...
Image restoration is a process that restores a degraded image to its original or near original form....
Today, the use of convolutional neural network models for deep learning in the field of image proces...
In this paper the minimization of a functional defined in the context of biomedical image processing...
Abstract- When low-level hardware simulations of cellular neural networks (CNN’s) are very costly fo...
Abstract In this research, we propose cellular neural networks using mixture template as an example ...
Abstract—In this paper, we research the combination of two neurons in the Cellular Neural Networks (...
Abstract—Image-analysis algorithms are of great interest in the context of object-oriented coding sc...
Abstract — In this research, we propose an image processing application using cellular neural networ...
A new approach for maximum posterior probability (MAP) image restoration based on cellular neural ne...
Abstract – A simple contribution to spatial novelty detection in stereo-vision systems for mobile ve...
: In this paper, we develop a common cellular neural network framework for various adaptive nonline...