An approach to setting the architecture and the initial weights of an artificial neural network for solving classification problems is presented. A nonneural phase finds an approximate solution to the classification problems by constraining the shape of classification regions. After an appropriate mapping into a neural net, neural training is applied to refine the solution. Results on an image recognition application are presente
The paper performs an algorithmic and experimental study regarding the generalization capacity of th...
The focus of this thesis is on the emerging technology known as Neural Networks which has recently b...
Thesis (Ph. D.)--University of Rochester. College of Engineering and Applied Science. Institute of O...
An approach to setting the architecture and the initial weights of an artificial neural network for ...
publication date: 2019-12-19; filing date: 2018-06-17A computer-implemented method for training a ne...
A new approach is proposed for the integration of neural networks (NN) with machine learning techniq...
The ability to classify texture regions in images is considered to be an important aspect of scene a...
The ability to classify texture regions in images is considered to be an important aspect of scene a...
In this paper neural network classifier is applied on transformed shape features for face recognitio...
This work focuses on the theory of artificial neural networks: the history, individual ways of learn...
This bachelor’s thesis centralizes on the possible uses of neural networks in the field of computer ...
A robust and accurate object recognition tool is presented in this paper. The paper introduced the u...
In this chapter, the problem of image classification, target detection, and objects seg mentation is...
A three stage recognition architecture that can be trained to different recognition or segmentation ...
Image classification is a well studied problem, with applications such as face recognition and natur...
The paper performs an algorithmic and experimental study regarding the generalization capacity of th...
The focus of this thesis is on the emerging technology known as Neural Networks which has recently b...
Thesis (Ph. D.)--University of Rochester. College of Engineering and Applied Science. Institute of O...
An approach to setting the architecture and the initial weights of an artificial neural network for ...
publication date: 2019-12-19; filing date: 2018-06-17A computer-implemented method for training a ne...
A new approach is proposed for the integration of neural networks (NN) with machine learning techniq...
The ability to classify texture regions in images is considered to be an important aspect of scene a...
The ability to classify texture regions in images is considered to be an important aspect of scene a...
In this paper neural network classifier is applied on transformed shape features for face recognitio...
This work focuses on the theory of artificial neural networks: the history, individual ways of learn...
This bachelor’s thesis centralizes on the possible uses of neural networks in the field of computer ...
A robust and accurate object recognition tool is presented in this paper. The paper introduced the u...
In this chapter, the problem of image classification, target detection, and objects seg mentation is...
A three stage recognition architecture that can be trained to different recognition or segmentation ...
Image classification is a well studied problem, with applications such as face recognition and natur...
The paper performs an algorithmic and experimental study regarding the generalization capacity of th...
The focus of this thesis is on the emerging technology known as Neural Networks which has recently b...
Thesis (Ph. D.)--University of Rochester. College of Engineering and Applied Science. Institute of O...