Abstract The Bio-inspired (Bi-i) Cellular Vision System is a computing platform consisting of sensing, array sensing-processing, and digital signal processing. The platform is based on the Cellular Neural/Nonlinear Network (CNN) paradigm. This article presents the implementation of a novel CNN-based segmentation algorithm onto the Bi-i system. Each part of the algorithm, along with the corresponding implementation on the hardware platform, is carefully described through the article. The experimental results, carried out for Foreman and Car-phone video sequences, highlight the feasibility of the approach, which provides a frame rate of about 26 frames/s. Comparisons with existing CNN-based methods show that the conceived approach is more acc...
A Cellular Nonlinear Network (CNN) based on uncoupled nonlinear oscillators is proposed for image pr...
CNN Universal Machines that contain two different processors working interactively with each other, ...
Cellular Neural Networks (CNNs) have been widely used recently in applications such as edge detectio...
Abstract The Bio-inspired (Bi-i) Cellular Vision System is a computing platform consisting of sensin...
Abstract The Bio-inspired (Bi-i) Cellular Vision System is a computing platform consisting of sensin...
Based on the cellular neural network (CNN) paradigm, the bio-inspired (bi-i) cellular vision system ...
This paper illustrates a new object-oriented segmentation algorithm based on the cellular neural net...
Abstract: In this contribution, we propose the use of Cellular Neural Networks as an application for...
Bi-i (Bio-inspired) Cellular Vision system is built mainly on Cellular Neural /Nonlinear Networks (C...
We show how a complex object oriented image analysis algorithm can be implemented on a CNNUM chip fo...
In this paper the minimization of a functional defined in the context of biomedical image processing...
Abstract—Image-analysis algorithms are of great interest in the context of object-oriented coding sc...
Two Cellular Neural Net Universal Machine (CNN-UM) prototypes are demonstrated in action. The first ...
Due to their local connectivity and wide functional capabilities, cellular nonlinear networks (CNN) ...
Several features of image segmentation make it suitable for bio–inspired techniques. It can be paral...
A Cellular Nonlinear Network (CNN) based on uncoupled nonlinear oscillators is proposed for image pr...
CNN Universal Machines that contain two different processors working interactively with each other, ...
Cellular Neural Networks (CNNs) have been widely used recently in applications such as edge detectio...
Abstract The Bio-inspired (Bi-i) Cellular Vision System is a computing platform consisting of sensin...
Abstract The Bio-inspired (Bi-i) Cellular Vision System is a computing platform consisting of sensin...
Based on the cellular neural network (CNN) paradigm, the bio-inspired (bi-i) cellular vision system ...
This paper illustrates a new object-oriented segmentation algorithm based on the cellular neural net...
Abstract: In this contribution, we propose the use of Cellular Neural Networks as an application for...
Bi-i (Bio-inspired) Cellular Vision system is built mainly on Cellular Neural /Nonlinear Networks (C...
We show how a complex object oriented image analysis algorithm can be implemented on a CNNUM chip fo...
In this paper the minimization of a functional defined in the context of biomedical image processing...
Abstract—Image-analysis algorithms are of great interest in the context of object-oriented coding sc...
Two Cellular Neural Net Universal Machine (CNN-UM) prototypes are demonstrated in action. The first ...
Due to their local connectivity and wide functional capabilities, cellular nonlinear networks (CNN) ...
Several features of image segmentation make it suitable for bio–inspired techniques. It can be paral...
A Cellular Nonlinear Network (CNN) based on uncoupled nonlinear oscillators is proposed for image pr...
CNN Universal Machines that contain two different processors working interactively with each other, ...
Cellular Neural Networks (CNNs) have been widely used recently in applications such as edge detectio...