This paper presents a study for the effect of learning rate on an approach for texture classification and detection based on the neural network principle. This neural network consists of three layers, which are input, output, and hidden layers. The back propagation technique is considered. A computer algorithm is deduced and applied. In this work, the synthetic textures are generated. The results are taken for the modern computer of AT 486 type. The mathematical analysis is summarized in order to illustrate the effect of learning rate parameter on the exact discrimination during processing. This effect is studied through applications. The minimum consumed time for the computational time of classification in industry is correlated to corresp...
Computer image processing often involves three processing stages : 1. detecting and extracting edges...
Texture classification poses a well known difficulty within computer vision systems. This paper revi...
In this paper the use of multilayer perceptron type neural networks in the characterization of image...
This paper presents backpropagation neural networks that utilize texture information to accurately c...
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...
This Master's thesis has concerned the segmentation and classification of background textures in ima...
The use of Neural Networks for skin detection has been reported in many research studies. However, d...
A Neural Network is a powerful data modeling tool that is able to capture and represent complex inpu...
A method of determining the effectiveness for training of a visual or sensor (for example radar or s...
This paper devoted the character recognition.The process of neural networks modeling for pattern rec...
A new low-bit learning algorithm for digital multilayer neural networks applied to pattern recogniti...
A large number of experiments have been done on the basic research of parameter estimation from imag...
Surface Inspection has a broad variety of potential applications in computer vision. Nevertheless th...
Thesis (Ph. D.)--University of Rochester. College of Engineering and Applied Science. Institute of O...
Computer image processing often involves three processing stages : 1. detecting and extracting edges...
Texture classification poses a well known difficulty within computer vision systems. This paper revi...
In this paper the use of multilayer perceptron type neural networks in the characterization of image...
This paper presents backpropagation neural networks that utilize texture information to accurately c...
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...
This Master's thesis has concerned the segmentation and classification of background textures in ima...
The use of Neural Networks for skin detection has been reported in many research studies. However, d...
A Neural Network is a powerful data modeling tool that is able to capture and represent complex inpu...
A method of determining the effectiveness for training of a visual or sensor (for example radar or s...
This paper devoted the character recognition.The process of neural networks modeling for pattern rec...
A new low-bit learning algorithm for digital multilayer neural networks applied to pattern recogniti...
A large number of experiments have been done on the basic research of parameter estimation from imag...
Surface Inspection has a broad variety of potential applications in computer vision. Nevertheless th...
Thesis (Ph. D.)--University of Rochester. College of Engineering and Applied Science. Institute of O...
Computer image processing often involves three processing stages : 1. detecting and extracting edges...
Texture classification poses a well known difficulty within computer vision systems. This paper revi...
In this paper the use of multilayer perceptron type neural networks in the characterization of image...