A new approach for edge detection of noisy image by cellular neural network (CNN) is proposed in this paper. In order to get the reasonable template, the statistical characteristics of image are utilized, and Gibbs image model is employed to describe the stochastic dependence of an edge pixel on its neighbourhood. Based on stochastic edge image models, edge detection of noisy image is equivalent to seeking a minimum of a cost function. If the template of CNN is designed carefully, the energy function can be mapped properly to the cost function of stochastic edge image model, then CNN can be used for seeking the minimum of cost function. Genetic algorithm is efficient in the field of optimization, and we also utilized this algorithm to get t...
This paper presents an edge constraint adaptive filtering algorithm based on cellular neural network...
This paper proposes a new approach for edge detec-tion by combining steerable filters and cellular n...
A two-dimensional model of a CNN with local couplings is considered as an image converter the input ...
Result of edge detection using CNN could be not optimal, because the optimal result is based on temp...
Result of edge detection using CNN could be not optimal, because the optimal result is based on temp...
A cellular neural network (CNN) based edge detector optimized by differential evolution (DE) algorit...
Cellular Neural Networks (CNNs) have been widely used recently in applications such as edge detectio...
Abstract—The present paper proposes a novel approach for edge detection in satellite images based on...
All anomalies are important in the interpretation of gravity and magnetic data because they indicate...
Abstract—Cellular neural network (CNN) is a large-scale nonlinear analog circuit suitable for real-t...
A few years ago, Tsuruta et al. have proposed Small World Cellular Neural Networks (SWCNN). SWCNN is...
A cellular neural network (CNN) is an information processing system with a large scale nonlinear ana...
Bi-i (Bio-inspired) Cellular Vision system is built mainly on Cellular Neural /Nonlinear Networks (C...
Aiming at the poor noise robustness of traditional Canny algorithm and the defect of false edge or e...
A new approach for image restoration by cellular neural network (CNN) is developed in this paper. Ba...
This paper presents an edge constraint adaptive filtering algorithm based on cellular neural network...
This paper proposes a new approach for edge detec-tion by combining steerable filters and cellular n...
A two-dimensional model of a CNN with local couplings is considered as an image converter the input ...
Result of edge detection using CNN could be not optimal, because the optimal result is based on temp...
Result of edge detection using CNN could be not optimal, because the optimal result is based on temp...
A cellular neural network (CNN) based edge detector optimized by differential evolution (DE) algorit...
Cellular Neural Networks (CNNs) have been widely used recently in applications such as edge detectio...
Abstract—The present paper proposes a novel approach for edge detection in satellite images based on...
All anomalies are important in the interpretation of gravity and magnetic data because they indicate...
Abstract—Cellular neural network (CNN) is a large-scale nonlinear analog circuit suitable for real-t...
A few years ago, Tsuruta et al. have proposed Small World Cellular Neural Networks (SWCNN). SWCNN is...
A cellular neural network (CNN) is an information processing system with a large scale nonlinear ana...
Bi-i (Bio-inspired) Cellular Vision system is built mainly on Cellular Neural /Nonlinear Networks (C...
Aiming at the poor noise robustness of traditional Canny algorithm and the defect of false edge or e...
A new approach for image restoration by cellular neural network (CNN) is developed in this paper. Ba...
This paper presents an edge constraint adaptive filtering algorithm based on cellular neural network...
This paper proposes a new approach for edge detec-tion by combining steerable filters and cellular n...
A two-dimensional model of a CNN with local couplings is considered as an image converter the input ...