Literature DB >> 23768190

A new training algorithm using artificial neural networks to classify gender-specific dynamic gait patterns.

Andre Andrade1, Marcelo Costa, Leopoldo Paolucci, Antônio Braga, Flavio Pires, Herbert Ugrinowitsch, Hans-Joachim Menzel.   

Abstract

The aim of this study was to present a new training algorithm using artificial neural networks called multi-objective least absolute shrinkage and selection operator (MOBJ-LASSO) applied to the classification of dynamic gait patterns. The movement pattern is identified by 20 characteristics from the three components of the ground reaction force which are used as input information for the neural networks in gender-specific gait classification. The classification performance between MOBJ-LASSO (97.4%) and multi-objective algorithm (MOBJ) (97.1%) is similar, but the MOBJ-LASSO algorithm achieved more improved results than the MOBJ because it is able to eliminate the inputs and automatically select the parameters of the neural network. Thus, it is an effective tool for data mining using neural networks. From 20 inputs used for training, MOBJ-LASSO selected the first and second peaks of the vertical force and the force peak in the antero-posterior direction as the variables that classify the gait patterns of the different genders.

Keywords:  gender classification; ground reaction force; multi-objective; neural networks

Mesh:

Year:  2013        PMID: 23768190     DOI: 10.1080/10255842.2013.803081

Source DB:  PubMed          Journal:  Comput Methods Biomech Biomed Engin        ISSN: 1025-5842            Impact factor:   1.763


  1 in total

1.  Study on quantitative diagnosis model of TCM syndromes of post-stroke depression based on combination of disease and syndrome.

Authors:  Ji-Peng Yang; Hong Zhao; Yu-Zheng Du; Hong-Wen Ma; Qi Zhao; Chen Li; Yi Zhang; Bo Li; Hong-Xia Guo; Hai-Peng Ban; Hai-Ping Lin; Wen-Long Gu; Xiang-Gang Meng; Qian Song; Xiao-Xian Jin; Tao Jiang; Xin Du; Yi-Xin Dong; Hai-Lun Jiang; Nan-Fang Wu; Wei Liu; Chang Rao; Yan-Jie Tong; Yu Li; Jing-Ying Liu
Journal:  Medicine (Baltimore)       Date:  2021-03-26       Impact factor: 1.817

  1 in total

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