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Dr. hassan mahmoud mohamed ramdan :: Publications:

Title:
Fall detection using an Ensemble of Learning Machines
Authors: S Bullota; H Mahmoud; F Masulli; E Palummeri; S Rovetta
Year: 2013
Keywords: Not Available
Journal: Not Available
Volume: Not Available
Issue: Not Available
Pages: Not Available
Publisher: Not Available
Local/International: International
Paper Link: Not Available
Full paper hassan mahmoud mohamed ramdan_Springer-ONLINE.pdf
Supplementary materials Not Available
Abstract:

A random ensemble of random perceptrons is studied and applied in fall detection and categorization, an important and growing problem in Ambient Assisted Living and other fields related to the care of elder and in general of “fragile” people. The classifier ensemble is designed around an ECOC aggregator and compensates for the lack of an accurate training with the number of base learners, which increases accuracy and strengthens the error-correcting capabilities of class codewords. The approach is suitable when some memory is available, but computational power is limited: this is the standard situation in mobile computing, and to an even larger extent in wearable computing. Performances on the two applicative tasks of fall recognition (dichotomic) and categorization (multi-class) are compared with those of support vector machines.

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