TY - JOUR
PY - 2016//
TI - Principal component analysis can decrease neural networks performance for incipient falls detection: a preliminary study with hands and feet accelerations
JO - Conference proceedings - IEEE engineering in medicine and biology society
A1 - Artoni, Fiorenzo
A1 - Martelli, Dario
A1 - Monaco, Vito
A1 - Micera, Silvestre
A1 - Artoni, Fiorenzo
A1 - Martelli, Dario
A1 - Monaco, Vito
A1 - Micera, Silvestre
SP - 6194
EP - 6197
VL - 2016
IS -
N2 - Fall-related accidents constitute a major problem for elderly people and a burden to the health-care national system. It is therefore important to design devices (e.g., accelerometers) and machine learning algorithms able to recognize incipient falls as quickly and reliably as possible. Blind source separation (BSS) methods are often used as a preprocessing step before classification, however the effects of BSS on classification performance are not well understood. The aim of this work is to preliminarily characterize the effect that two methods, namely Principal and Independent Component Analysis (PCA and ICA) and their combined use have on the performance of a neural network in detecting incipient falls. We used the feet and arms 3D kinematics of subjects while managing unexpected perturbations during walking.
RESULTS show that PCA needs to be used carefully as depending on the initial dataset, the PCA might lump variance together thus impairing the performance of an artificial neural networks (ANN) classifier. The use of PCA with 85% residual variance threshold significantly decreased the classifier performance, which was restored with a subsequent ICA (PCA + ICA). The results suggest that BSS techniques, though linear, might have an adverse effect on nonlinear classifiers such as ANN that might be dependent on the initial dataset redundancy.
Language: en
LA - en SN - 1557-170X UR - http://dx.doi.org/10.1109/EMBC.2016.7592143 ID - ref1 ER -