This paper presents cellular neural networks (CNN) for one-dimensional discrete signal processing. Although CNN has been extensively used in image processing applications, little has been done for 1-dimensional signal processing. We propose a novel CNN architecture to carry out these tasks. This architecture consists of a shift register, e.g., a charge coupled device, and a 1×n neural array. Each cell processes a sample of the input signal. By using appropriate templates and shifting the input signal the CNN array is capable of performing FIR filtering, discrete Fourier transform, and wavelet decomposition and reconstruction. Even though this implementation is not more efficient than conventional methods, the paper shows that an analog comp...
A Cellular Nonlinear Network (CNN) based on uncoupled nonlinear oscillators is proposed for image pr...
One-dimensional neural networks, also known as 1D convolutional neural networks (CNNs), are a type o...
Cellular Neural Networks are characterized by simplicity of operation. The network consists of a lar...
This paper studies on the behavior of one-dimensional discrete-time binary cellular neural networks ...
This paper presents a novel discrete-time and fully programmable cellular neural network (CNN) suita...
While VLSI of CNNs has seen significant progress in two-dimensional signal processing little has bee...
1D Convolutional Neural Networks (CNNs) have recently become the state-of-the-art technique for cruc...
Feedforward discrete-time cellular neural network for filtering of impulse noise from two-dimensiona...
Cellular neural networks (CNN) have traditionally been used to perform nonlinear operations on image...
This paper proposes a multi-functional cellular neu-ral network (CNN) circuit based on arbitrary non...
Cellular Neural Networks (CNNs) are widely used for real-time image processing applications. Though ...
A new Cellular Neural Network (CNN)-based system has been implemented and tested to demonstrate the ...
Abstract- When low-level hardware simulations of cellular neural networks (CNN’s) are very costly fo...
International audienceA cellular nonlinear network (CNN) based on uncoupled nonlinear oscillators is...
Cellular Neural Networks (CNNs) are massively parallel nonlinear locally connected analog cells; the...
A Cellular Nonlinear Network (CNN) based on uncoupled nonlinear oscillators is proposed for image pr...
One-dimensional neural networks, also known as 1D convolutional neural networks (CNNs), are a type o...
Cellular Neural Networks are characterized by simplicity of operation. The network consists of a lar...
This paper studies on the behavior of one-dimensional discrete-time binary cellular neural networks ...
This paper presents a novel discrete-time and fully programmable cellular neural network (CNN) suita...
While VLSI of CNNs has seen significant progress in two-dimensional signal processing little has bee...
1D Convolutional Neural Networks (CNNs) have recently become the state-of-the-art technique for cruc...
Feedforward discrete-time cellular neural network for filtering of impulse noise from two-dimensiona...
Cellular neural networks (CNN) have traditionally been used to perform nonlinear operations on image...
This paper proposes a multi-functional cellular neu-ral network (CNN) circuit based on arbitrary non...
Cellular Neural Networks (CNNs) are widely used for real-time image processing applications. Though ...
A new Cellular Neural Network (CNN)-based system has been implemented and tested to demonstrate the ...
Abstract- When low-level hardware simulations of cellular neural networks (CNN’s) are very costly fo...
International audienceA cellular nonlinear network (CNN) based on uncoupled nonlinear oscillators is...
Cellular Neural Networks (CNNs) are massively parallel nonlinear locally connected analog cells; the...
A Cellular Nonlinear Network (CNN) based on uncoupled nonlinear oscillators is proposed for image pr...
One-dimensional neural networks, also known as 1D convolutional neural networks (CNNs), are a type o...
Cellular Neural Networks are characterized by simplicity of operation. The network consists of a lar...