Title of article
Quantification of symmetry for functional data with application to equine lameness classification
Author/Authors
Helle Sorensen، نويسنده , , Anders Tolver، نويسنده , , Maj Halling Thomsen&Pia Haubro Andersen، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2012
Pages
24
From page
337
To page
360
Abstract
This paper presents a study on symmetry of repeated bi-phased data signals, in particular, on quantification
of the deviation between the two parts of the signal. Three symmetry scores are defined using functional data
techniques such as smoothing and registration. One score is related to the L2-distance between the two parts
of the signal, whereas the other two are constructed to specifically measure differences in amplitude and
phase. Moreover, symmetry scores based on functional principal component analysis (PCA) are examined.
The scores are applied to acceleration signals from a study on equine gait. The scores turn out to be highly
associated with lameness, and their applicability for lameness quantification and detection is investigated.
Four classification approaches turn out to give similar results. The scores describing amplitude and phase
variation turn out to outperform the PCA scores when it comes to the classification of lameness.
Keywords
Principal component analysis , Symmetry , classification , Classification and regression trees , equine lameness , linear discriminant analysis , functional data analysis , acceleration signals
Journal title
JOURNAL OF APPLIED STATISTICS
Serial Year
2012
Journal title
JOURNAL OF APPLIED STATISTICS
Record number
712737
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