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ICA Face Recognition

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Name: ICA Face Recognition
Works on: windowsWindows NT and above
Developer: Luigi Rosa
Version: 1
Last Updated: 24 Apr 2017
Release: 25 Nov 2012
Category: Others > Home and Education
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ICA Face Recognition Details

Works on: Windows 10 | Windows 8.1 | Windows 8 | Windows 7 | Windows XP | Windows 2000 | Windows 2003 | Windows 2008 | Windows 98 | Windows ME | Windows NT | Windows Vista | Windows 2012
SHA1 Hash: 8480bfe41823a9baf6bd3e4c2fcdcfe372faf711
Size: 360.22 KB
File Format: zip
Rating: 1.913043478 out of 5 based on 23 user ratings
Downloads: 262
License: Free
ICA Face Recognition is a free software by Luigi Rosa and works on Windows 10, Windows 8.1, Windows 8, Windows 7, Windows XP, Windows 2000, Windows 2003, Windows 2008, Windows 98, Windows ME, Windows NT, Windows Vista, Windows 2012.
You can download ICA Face Recognition which is 360.22 KB in size and belongs to the software category Home and Education.
ICA Face Recognition was released on 2012-11-25 and last updated on our database on 2017-04-24 and is currently at version 1.
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ICA Face Recognition Description

In a task such as face recognition, much of the important information may be contained in the high-order relationships among the image pixels. A number of face recognition algorithms employ principal component analysis (PCA), which is based on the second-order statistics of the image set, and does not address high-order statistical dependencies such as the relationships among three or more pixels. Independent component analysis (ICA) is a generalization of PCA which separates the high-order moments of the input in addition to the second-order moments. ICA was performed on a set of face images by an unsupervised learning algorithm derived from the principle of optimal information transfer through sigmoidal neurons. The algorithm maximizes the mutual information between the input and the output, which produces statistically independent outputs under certain conditions. ICA representation was superior to representations based on principal components analysis for recognizing faces across sessions and changes in expression.
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