Computer Science / Neural Computing

All posts under category "Computer Science / Neural Computing"

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A stochastic model of human visual attention with a dynamic Bayesian network

Recent studies in the field of human vision science suggest that the human responses to the stimuli on a visual display are non-deterministic. People may attend to different locations on the same visual input at the same time. Based on this knowledge, we propose a new stochastic model of visual atte

Computer Vision Neural Computing Network Model Machine Learning Computer Science Multimedia Statistics
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Detection and classification of masses in mammographic images in a multi-kernel approach

According to the World Health Organization, breast cancer is the main cause of cancer death among adult women in the world. Although breast cancer occurs indiscriminately in countries with several degrees of social and economic development, among developing and underdevelopment countries mortality r

Detection Computer Vision Image Processing Neural Computing Computer Science Electrical Engineering and Systems Science
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Integrating Real-Time Analysis With The Dendritic Cell Algorithm Through Segmentation

As an immune inspired algorithm, the Dendritic Cell Algorithm (DCA) has been applied to a range of problems, particularly in the area of intrusion detection. Ideally, the intrusion detection should be performed in real-time, to continuously detect misuses as soon as they occur. Consequently, the ana

Analysis Neural Computing Artificial Intelligence Computer Science Cryptography and Security
TRUST-TECH based Methods for Optimization and Learning

TRUST-TECH based Methods for Optimization and Learning

Many problems that arise in machine learning domain deal with nonlinearity and quite often demand users to obtain global optimal solutions rather than local optimal ones. Optimization problems are inherent in machine learning algorithms and hence many methods in machine learning were inherited from

Computational Engineering Mathematical Software Neural Computing Computer Science Artificial Intelligence Numerical Analysis Learning
Design space exploration of Ferroelectric FET based Processing-in-Memory   DNN Accelerator

Design space exploration of Ferroelectric FET based Processing-in-Memory DNN Accelerator

In this letter, we quantify the impact of device limitations on the classification accuracy of an artificial neural network, where the synaptic weights are implemented in a Ferroelectric FET (FeFET) based in-memory processing architecture. We explore a design-space consisting of the resolution of th

Computer Science Emerging Technologies Electrical Engineering and Systems Science Neural Computing
An Enhanced Multi-Objective Biogeography-Based Optimization for   Overlapping Community Detection in Social Networks with Node Attributes

An Enhanced Multi-Objective Biogeography-Based Optimization for Overlapping Community Detection in Social Networks with Node Attributes

Community detection is one of the most important and interesting issues in social network analysis. In recent years, simultaneous considering of nodes' attributes and topological structures of social networks in the process of community detection has attracted the attentions of many scholars, and th

Network Neural Computing Computer Science Social Networks Detection
Artificial neural network based modelling approach for municipal solid   waste gasification in a fluidized bed reactor

Artificial neural network based modelling approach for municipal solid waste gasification in a fluidized bed reactor

In this paper, multi-layer feed forward neural networks are used to predict the lower heating value of gas (LHV), lower heating value of gasification products including tars and entrained char (LHVp) and syngas yield during gasification of municipal solid waste (MSW) during gasification in a fluidiz

Computational Engineering Model Network Neural Computing Machine Learning Computer Science Physics
Controllability, Multiplexing, and Transfer Learning in Networks using   Evolutionary Learning

Controllability, Multiplexing, and Transfer Learning in Networks using Evolutionary Learning

Networks are fundamental building blocks for representing data, and computations. Remarkable progress in learning in structurally defined (shallow or deep) networks has recently been achieved. Here we introduce evolutionary exploratory search and learning method of topologically flexible networks un

Network Neural Computing Machine Learning Computer Science Artificial Intelligence Quantitative Biology Learning
Dimensionality Reduction and Reconstruction using Mirroring Neural   Networks and Object Recognition based on Reduced Dimension Characteristic   Vector

Dimensionality Reduction and Reconstruction using Mirroring Neural Networks and Object Recognition based on Reduced Dimension Characteristic Vector

In this paper, we present a Mirroring Neural Network architecture to perform non-linear dimensionality reduction and Object Recognition using a reduced lowdimensional characteristic vector. In addition to dimensionality reduction, the network also reconstructs (mirrors) the original high-dimensional

Network Neural Computing Computer Science Artificial Intelligence Computer Vision

< Category Statistics (Total: 5017) >

General Relativity
66
General Research
781
HEP-EX
25
HEP-LAT
7
HEP-PH
79
HEP-TH
67
MATH-PH
79
NUCL-EX
6
NUCL-TH
14
Quantum Physics
67

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