149,479 research outputs found
Contour detection by CORF operator
We propose a contour operator, called CORF, inspired by
the properties of simple cells in visual cortex. It combines, by a weighted
geometric mean, the blurred responses of difference-of-Gaussian operators
that model cells in the lateral geniculate nucleus (LGN). An operator
that has gained particular popularity as a computational model of a simple
cell is based on a family of Gabor Functions (GFs). However, the GF
operator short-cuts the LGN, and its effectiveness in contour detection
tasks, which is assumed to be the primary biological role of simple cells,
has never been compared with the effectiveness of alternative operators.
We compare the performances of the CORF and the GF operators using
the RuG and the Berkeley data sets of natural scenes with associated
ground truths. The proposed CORF operator outperforms the GF operator
(RuG: t(39)=4.39, p<10−4 and Berkeley: t(499)=4.95, p<10−6).peer-reviewe
Artificial Neural Networks
Artificial Neural Network is a mathematical model, made in the form of
software or hardware, built on the principle of biological neural networks of living
cells. The neural network is a system of connected processors interacting with each
other. If you compare them with the biological analogue, you will understand that the
artificial network and the network of neurons are almost the same things. These
processors are usually simple (compared to a CPU used in a PC). Each network
processor either receives signals for processing or sent it to other processors. But if
they are connected in a huge network with controlled interaction, these «simple»
processors in large quantities can complete incredibly complicated tasks
Artificial Neural Networks
Artificial Neural Network is a mathematical model, made in the form of
software or hardware, built on the principle of biological neural networks of living
cells. The neural network is a system of connected processors interacting with each
other. If you compare them with the biological analogue, you will understand that the
artificial network and the network of neurons are almost the same things. These
processors are usually simple (compared to a CPU used in a PC). Each network
processor either receives signals for processing or sent it to other processors. But if
they are connected in a huge network with controlled interaction, these «simple»
processors in large quantities can complete incredibly complicated tasks
Artificial neural networks
Nowadays we are living in the age of computers, and we are systematically
making our way to creating artificial intelligence. In addition, one of possible
directions to make AI come true is to find the way of generalizing patterns. Solving
this problem will help us not only to create a program that can generate thoughts, but
to understand how we think
Artificial Neural Networks
Artificial neural networks (ANNs) constitute a class of flexible nonlinear models designed to mimic biological neural systems. In this entry, we introduce ANN using familiar econometric terminology and provide an overview of ANN modeling approach and its implementation methods.
A multivariate approach to heavy flavour tagging with cascade training
This paper compares the performance of artificial neural networks and boosted
decision trees, with and without cascade training, for tagging b-jets in a
collider experiment. It is shown, using a Monte Carlo simulation of events, that for a b-tagging efficiency of 50%, the light jet
rejection power given by boosted decision trees without cascade training is
about 55% higher than that given by artificial neural networks. The cascade
training technique can improve the performance of boosted decision trees and
artificial neural networks at this b-tagging efficiency level by about 35% and
80% respectively. We conclude that the cascade trained boosted decision trees
method is the most promising technique for tagging heavy flavours at collider
experiments.Comment: 14 pages, 12 figures, revised versio
Theoretical Interpretations and Applications of Radial Basis Function Networks
Medical applications usually used Radial Basis Function Networks just as Artificial Neural Networks. However, RBFNs are Knowledge-Based Networks that can be interpreted in several way: Artificial Neural Networks, Regularization Networks, Support Vector Machines, Wavelet Networks, Fuzzy Controllers, Kernel Estimators, Instanced-Based Learners. A survey of their interpretations and of their corresponding learning algorithms is provided as well as a brief survey on dynamic learning algorithms. RBFNs' interpretations can suggest applications that are particularly interesting in medical domains
- …