Color-segmentation is very sensitive to changes in the intensity of light. Many algorithms do not tolerate variations in color hue which correspond, in fact, to the same object. Learning Vector Quantization (LVQ) networks learn to recognize groups of similar input vectors in such a way that neurons physically near to each other in the neuron layer respond to similar input vectors. Learning is supervised, the inputs vectors into target classes are chosen by the user. In this work a new algorithm based on LVQ is presented. It involves neural networks that operate directly on the image pixels with a decision function. This algorithm has been applied to spotting and tracking human faces, and shows more robustness than other algorithms for the s...
Abstract:- This paper presents a study of the sensitivity analysis of the artificial Hopfield Neural...
We introduce an approach to integrate segmentation information within a convolutional neural network...
We show in this paper how Neural Networks can be used for Human Face Processing. In Part I, we show ...
Color-segmentation is very sensitive to changes in the intensity of light. Many algorithms do not to...
Color-segmentation is very sensitive to changes in the intensity of light. Many algorithms do not to...
Segmentation in color images is a complex and challenging task in particular to overcome changes in ...
Segmentation in color images is a complex and challenging task in particular to overcome changes in ...
This paper proposes a new method for supervised color image classification by theKohonen map, based ...
Abstract. This paper presents some results on the possibilities offered by neural networks for human...
Although widely studied for many years, colour image quantisation remains a challenging problem. We ...
Littmann E, Ritter H. Adaptive color segmentation - A comparison of neural and statistical methods. ...
Abstract. We show in this paper how Neural Networks can be used for Human Face Processing. In Part I...
Color quantization (CQ) is an image processing task popularly used to convert true color images to p...
311 p. : il.[EN]This Thesis covers a broad period of research activities with a commonthread: learni...
Recent work suggests that changing Convolutional Neural Network (CNN) architecture by introducing a ...
Abstract:- This paper presents a study of the sensitivity analysis of the artificial Hopfield Neural...
We introduce an approach to integrate segmentation information within a convolutional neural network...
We show in this paper how Neural Networks can be used for Human Face Processing. In Part I, we show ...
Color-segmentation is very sensitive to changes in the intensity of light. Many algorithms do not to...
Color-segmentation is very sensitive to changes in the intensity of light. Many algorithms do not to...
Segmentation in color images is a complex and challenging task in particular to overcome changes in ...
Segmentation in color images is a complex and challenging task in particular to overcome changes in ...
This paper proposes a new method for supervised color image classification by theKohonen map, based ...
Abstract. This paper presents some results on the possibilities offered by neural networks for human...
Although widely studied for many years, colour image quantisation remains a challenging problem. We ...
Littmann E, Ritter H. Adaptive color segmentation - A comparison of neural and statistical methods. ...
Abstract. We show in this paper how Neural Networks can be used for Human Face Processing. In Part I...
Color quantization (CQ) is an image processing task popularly used to convert true color images to p...
311 p. : il.[EN]This Thesis covers a broad period of research activities with a commonthread: learni...
Recent work suggests that changing Convolutional Neural Network (CNN) architecture by introducing a ...
Abstract:- This paper presents a study of the sensitivity analysis of the artificial Hopfield Neural...
We introduce an approach to integrate segmentation information within a convolutional neural network...
We show in this paper how Neural Networks can be used for Human Face Processing. In Part I, we show ...