Title :
Human Gait Modeling Using a Genetic Fuzzy Finite State Machine
Author :
Alvarez-Alvarez, Alberto ; Trivino, Gracian ; Cordón, Oscar
Author_Institution :
Comput. with Perceptions Res. Unit, Eur. Centre for Soft Comput., Mieres, Spain
fDate :
4/1/2012 12:00:00 AM
Abstract :
Human gait modeling consists of studying the biomechanics of this human movement. Its importance lies in the fact that its analysis can help in the diagnosis of walking and movement disorders or rehabilitation programs, among other medical situations. Fuzzy finite state machines can be used to model the temporal evolution of this type of phenomenon. Nevertheless, the definition of details of the model in each particular case is a complex task for experts. In this paper, we present an automatic method to learn the model parameters that are based on the hybridization of fuzzy finite state machines and genetic algorithms leading to genetic fuzzy finite state machines. This new genetic fuzzy system automatically learns the fuzzy rules and membership functions of the fuzzy finite state machine, while an expert defines the possible states and allowed transitions. Our final goal is to obtain a specific model for each person´s gait in such a way that it can generalize well with different gaits of the same person. The obtained model must become an accurate and human friendly linguistic description of this phenomenon, with the capability to identify the relevant phases of the process. A complete experimentation is developed to test the performance of the new proposal when dealing with datasets of 20 different people, comprising a detailed analysis of results, which shows the advantages of our proposal in comparison with some other classical and computational intelligence techniques.
Keywords :
finite state machines; fuzzy set theory; gait analysis; genetic algorithms; medical disorders; patient diagnosis; patient rehabilitation; fuzzy finite state machine; fuzzy rules; genetic algorithm; genetic fuzzy system; human gait modeling; human movement biomechanics; hybridization; membership functions; model parameter; movement disorder diagnosis; rehabilitation programs; temporal evolution; walking disorder diagnosis; Acceleration; Computational modeling; Foot; Fuzzy systems; Humans; Mathematical model; Pragmatics; Fuzzy finite state machines; fuzzy systems; genetic algorithms (GAs); genetic fuzzy systems; human gait modeling;
Journal_Title :
Fuzzy Systems, IEEE Transactions on
DOI :
10.1109/TFUZZ.2011.2171973