Bi-i (Bio-inspired) Cellular Vision system is built mainly on Cellular Neural /Nonlinear Networks (CNNs) type (ACE16k) and Digital Signal Processing (DSP) type microprocessors. CNN theory proposed by Chua has advanced properties for image processing applications. In this study, the edge detection algorithms are implemented on the Bi-i Cellular Vision System. Extracting the edge of an image to be processed correctly and fast is of crucial importance for image processing applications. Threshold Gradient based edge detection algorithm is implemented using ACE16k microprocessor. In addition, pre-processing operation is realized by using an image enhancement technique based on Laplacian operator. Finally, morphologic operations are performed as ...
A few years ago, Tsuruta et al. have proposed Small World Cellular Neural Networks (SWCNN). SWCNN is...
Abstract—Cellular neural network (CNN) is a large-scale nonlinear analog circuit suitable for real-t...
Edge detection is a method to detect presence of an object’s image- typically this is identified by ...
A cellular neural network (CNN) based edge detector optimized by differential evolution (DE) algorit...
Abstract The Bio-inspired (Bi-i) Cellular Vision System is a computing platform consisting of sensin...
A new approach for edge detection of noisy image by cellular neural network (CNN) is proposed in thi...
Result of edge detection using CNN could be not optimal, because the optimal result is based on temp...
Abstract: Image processing has crucial effects in many fields like biomedical applications, traffic ...
Based on the cellular neural network (CNN) paradigm, the bio-inspired (bi-i) cellular vision system ...
Result of edge detection using CNN could be not optimal, because the optimal result is based on temp...
Abstract The Bio-inspired (Bi-i) Cellular Vision System is a computing platform consisting of sensin...
Cellular Neural Networks (CNNs) have been widely used recently in applications such as edge detectio...
In this paper an image enhancing technique is described. It is based on Shunting Inhibitory Cellular...
Abstract—The present paper proposes a novel approach for edge detection in satellite images based on...
Computer image processing often involves three processing stages : 1. detecting and extracting edges...
A few years ago, Tsuruta et al. have proposed Small World Cellular Neural Networks (SWCNN). SWCNN is...
Abstract—Cellular neural network (CNN) is a large-scale nonlinear analog circuit suitable for real-t...
Edge detection is a method to detect presence of an object’s image- typically this is identified by ...
A cellular neural network (CNN) based edge detector optimized by differential evolution (DE) algorit...
Abstract The Bio-inspired (Bi-i) Cellular Vision System is a computing platform consisting of sensin...
A new approach for edge detection of noisy image by cellular neural network (CNN) is proposed in thi...
Result of edge detection using CNN could be not optimal, because the optimal result is based on temp...
Abstract: Image processing has crucial effects in many fields like biomedical applications, traffic ...
Based on the cellular neural network (CNN) paradigm, the bio-inspired (bi-i) cellular vision system ...
Result of edge detection using CNN could be not optimal, because the optimal result is based on temp...
Abstract The Bio-inspired (Bi-i) Cellular Vision System is a computing platform consisting of sensin...
Cellular Neural Networks (CNNs) have been widely used recently in applications such as edge detectio...
In this paper an image enhancing technique is described. It is based on Shunting Inhibitory Cellular...
Abstract—The present paper proposes a novel approach for edge detection in satellite images based on...
Computer image processing often involves three processing stages : 1. detecting and extracting edges...
A few years ago, Tsuruta et al. have proposed Small World Cellular Neural Networks (SWCNN). SWCNN is...
Abstract—Cellular neural network (CNN) is a large-scale nonlinear analog circuit suitable for real-t...
Edge detection is a method to detect presence of an object’s image- typically this is identified by ...