AbstractThis paper introduces an efficient training algorithm for a dendrite morphological neural network (DMNN). Given p classes of patterns, Ck, k=1, 2, …, p, the algorithm selects the patterns of all the classes and opens a hyper-cube HCn (with n dimensions) with a size such that all the class elements remain inside HCn. The size of HCn can be chosen such that the border elements remain in some of the faces of HCn, or can be chosen for a bigger size. This last selection allows the trained DMNN to be a very efficient classification machine in the presence of noise at the moment of testing, as we will see later. In a second step, the algorithm divides the HCn into 2n smaller hyper-cubes and verifies if each hyper-cube encloses patterns for...
The logic dendritic neuron model (LDNM), which is inspired by natural neurons, has emerged as a nove...
Morphological neural networks (MNNs) can be characterized as a class of artificial neural networks t...
In this paper, we discuss the nonlinear computational power provided by dendrites in biological and ...
AbstractThis paper introduces an efficient training algorithm for a dendrite morphological neural ne...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
A classical approach to designing binary image operators is Mathematical Morphology (MM). We propose...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
In the biological sciences, image analysis software are used to detect, segment or classify a variet...
Artificial neural networks (ANNs), inspired by the interconnection of real neurons, have achieved un...
The development of power-efficient neuromorphic devices presents the challenge of designing spike pa...
A dendritic neuron model with adaptive synapses (DMASs) based on differential evolution (DE) algorit...
There has been a lack of progress in developing spiking neuron models for pattern classification, wh...
Working up with deep learning techniques requires profound understanding of the mechanisms underlyin...
A morphological neural network is generally defined as a type of artificial neural network that perf...
The logic dendritic neuron model (LDNM), which is inspired by natural neurons, has emerged as a nove...
Morphological neural networks (MNNs) can be characterized as a class of artificial neural networks t...
In this paper, we discuss the nonlinear computational power provided by dendrites in biological and ...
AbstractThis paper introduces an efficient training algorithm for a dendrite morphological neural ne...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
A classical approach to designing binary image operators is Mathematical Morphology (MM). We propose...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
In the biological sciences, image analysis software are used to detect, segment or classify a variet...
Artificial neural networks (ANNs), inspired by the interconnection of real neurons, have achieved un...
The development of power-efficient neuromorphic devices presents the challenge of designing spike pa...
A dendritic neuron model with adaptive synapses (DMASs) based on differential evolution (DE) algorit...
There has been a lack of progress in developing spiking neuron models for pattern classification, wh...
Working up with deep learning techniques requires profound understanding of the mechanisms underlyin...
A morphological neural network is generally defined as a type of artificial neural network that perf...
The logic dendritic neuron model (LDNM), which is inspired by natural neurons, has emerged as a nove...
Morphological neural networks (MNNs) can be characterized as a class of artificial neural networks t...
In this paper, we discuss the nonlinear computational power provided by dendrites in biological and ...