ICA Health Summary

ICA Health Summary
Author: United States. International Cooperation Administration. Office of Public Health
Publisher:
Total Pages: 424
Release: 1958
Genre:
ISBN:

ICA Health Summary

ICA Health Summary
Author: United States. International Cooperation Administration
Publisher:
Total Pages: 1142
Release: 1955-08
Genre: Public health
ISBN:

International Health Regulations (2005)

International Health Regulations (2005)
Author: World Health Organization
Publisher: World Health Organization
Total Pages: 82
Release: 2008-12-15
Genre: Medical
ISBN: 9241580410

In response to the call of the 48th World Health Assembly for a substantial revision of the International Health Regulations, this new edition of the Regulations will enter into force on June 15, 2007. The purpose and scope of the Regulations are "to prevent, protect against, control and provide a public health response to the international spread of disease in ways that are commensurate with and restricted to public health risks, and which avoid unnecessary interference with international traffic and trade." The Regulations also cover certificates applicable to international travel and transport, and requirements for international ports, airports and ground crossings.

Development of ICA and IVA Algorithms with Application to Medical Image Analysis

Development of ICA and IVA Algorithms with Application to Medical Image Analysis
Author: Zois Boukouvalas
Publisher:
Total Pages: 242
Release: 2017
Genre:
ISBN:

Blind source separation (BSS) is an active area of research due to its applicability to a variety of problems, especially when there is a little known about the observed data. Applications where BSS has been successfully utilized include the analysis of medical imaging data, such as functional magnetic resonance imaging (fMRI) data, detection of specific targets in video sequences or multi-spectral remote sensing data, among many others. Independent component analysis (ICA) is a widely used BSS method that can uniquely achieve source recovery, subject to only scaling and permutation ambiguities, through the assumption of statistical independence on the part of the latent sources. Independent vector analysis (IVA) extends the applicability of ICA by jointly decomposing multiple datasets through the exploitation of the dependencies across datasets. Though both ICA and IVA algorithms cast in the maximum likelihood (ML) framework enable the use of all available statistical information---forms of diversity---in reality, they often deviate from their theoretical optimality properties due to improper estimation of the probability density function (PDF). This motivates the development of flexible ICA and IVA algorithms that closely adhere to the underlying statistical description of the data. Although it is attractive to let the data ''speak'' and hence minimize the assumptions, important prior information about the data, such as sparsity, is usually available. If incorporated into the ICA model, use of this additional information can relax the independence assumption, resulting in an improvement in the overall separation performance. Therefore, the development of a unified mathematical framework that can take into account both statistical independence and sparsity is of great interest.

Author-title Catalog

Author-title Catalog
Author: University of California, Berkeley. Library
Publisher:
Total Pages: 1006
Release: 1963
Genre: Library catalogs
ISBN: