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Nonlinear Analysis to Quantify Movement Variability in Human-humanoid Interaction

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Author :
Release : 2019
Genre :
Kind : eBook
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Book Synopsis Nonlinear Analysis to Quantify Movement Variability in Human-humanoid Interaction by : Miguel Xochicale

Download or read book Nonlinear Analysis to Quantify Movement Variability in Human-humanoid Interaction written by Miguel Xochicale. This book was released on 2019. Available in PDF, EPUB and Kindle. Book excerpt:

Nonlinear Analysis for Human Movement Variability

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Author :
Release : 2018-09-03
Genre : Medical
Kind : eBook
Book Rating : 376/5 ( reviews)

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Book Synopsis Nonlinear Analysis for Human Movement Variability by : Nicholas Stergiou

Download or read book Nonlinear Analysis for Human Movement Variability written by Nicholas Stergiou. This book was released on 2018-09-03. Available in PDF, EPUB and Kindle. Book excerpt: How Does the Body’s Motor Control System Deal with Repetition? While the presence of nonlinear dynamics can be explained and understood, it is difficult to be measured. A study of human movement variability with a focus on nonlinear dynamics, Nonlinear Analysis for Human Movement Variability, examines the characteristics of human movement within this framework, explores human movement in repetition, and explains how and why we analyze human movement data. It takes an in-depth look into the nonlinear dynamics of systems within and around us, investigates the temporal structure of variability, and discusses the properties of chaos and fractals as they relate to human movement. Providing a foundation for the use of nonlinear analysis and the study of movement variability in practice, the book describes the nonlinear dynamical features found in complex biological and physical systems, and introduces key concepts that help determine and identify patterns within the fluctuations of data that are repeated over time. It presents commonly used methods and novel approaches to movement analysis that reveal intriguing properties of the motor control system and introduce new ways of thinking about variability, adaptability, health, and motor learning. In addition, this text: Demonstrates how nonlinear measures can be used in a variety of different tasks and populations Presents a wide variety of nonlinear tools such as the Lyapunov exponent, surrogation, entropy, and fractal analysis Includes examples from research on how nonlinear analysis can be used to understand real-world applications Provides numerous case studies in postural control, gait, motor control, and motor development Nonlinear Analysis for Human Movement Variability advances the field of human movement variability research by dissecting human movement and studying the role of movement variability. The book proposes new ways to use nonlinear analysis and investigate the temporal structure of variability, and enables engineers, movement scientists, clinicians, and those in related disciplines to effectively apply nonlinear analysis in practice.

A Nonlinear Analysis of Movement Variability

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Author :
Release : 2016
Genre : Human mechanics
Kind : eBook
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Book Synopsis A Nonlinear Analysis of Movement Variability by : Cameron T. Gibbons

Download or read book A Nonlinear Analysis of Movement Variability written by Cameron T. Gibbons. This book was released on 2016. Available in PDF, EPUB and Kindle. Book excerpt: The human body is a complex system comprised of many parts that can coordinate in a variety of ways to produce controlled action. This creates a challenge for researchers and clinicians in the treatment of variability in motor control. The current study aims at testing the utility of a nonlinear analysis measure the Largest Lyapunov exponent (1) in a whole body movement. Experiment 1 examined this measure, in comparison to traditional linear measure (standard deviation), by having participants perform a sit-to-stand (STS) task on platforms that were either stable or unstable. Results supported the notion that the Lyapunov measure characterized controlled/stable movement across the body more accurately than the traditional standard deviation (SD) measure. Experiment 2 tested this analysis further by presenting participants with an auditory perturbation during performance of the same STS task. Results showed that both the Lyapunov and SD measures failed to detect the perturbation. However, the auditory perturbation may not have been an appropriate perturbation. Limitations of Experiment 2 are discussed, as well as directions for future study.

Movement System Variability

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Author :
Release : 2006
Genre : Efferent pathways
Kind : eBook
Book Rating : 820/5 ( reviews)

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Book Synopsis Movement System Variability by : Keith Davids

Download or read book Movement System Variability written by Keith Davids. This book was released on 2006. Available in PDF, EPUB and Kindle. Book excerpt: This in-depth, multidisciplinary analysis of the latest research adds a new theoretical interpretation to the role of variability in movement behaviour. Many scientific disciplines are represented in the text and each chapter examines a range of topics.

The Effect of Input Parameters on Detrended Fluctuation Analysis of Theoretical and Postural Control Data

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Author :
Release : 2015
Genre : Biomechanics
Kind : eBook
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Book Synopsis The Effect of Input Parameters on Detrended Fluctuation Analysis of Theoretical and Postural Control Data by : Melissa Rose Taylor

Download or read book The Effect of Input Parameters on Detrended Fluctuation Analysis of Theoretical and Postural Control Data written by Melissa Rose Taylor. This book was released on 2015. Available in PDF, EPUB and Kindle. Book excerpt: Biological variability is critical for healthy function and is present in all types of physiological movements. Variability exists on a spectrum in which the optimal amount falls between two extremes: a lack of variability indicating rigidity and limited adaptability and excessive variability indicating instability and random, uncontrolled motion. Traditionally, physiological variability has been quantified using linear measures, such as means, standard deviations, and ranges that ignore the temporal structure of the data. Nonlinear measures, however, take into account the temporal structure of the data and can be used to quantify the amount of order, predictability, regularity, and complexity associated with a system. It is believed that nonlinear analyses provide greater insight into human movement variability. Detrended fluctuation analysis (DFA) is a nonlinear analysis tool that has been used in posturography (i.e. postural control or balance) research. A limitation of DFA that has restricted its widespread use for analyzing physiological data, however, is its heavy dependence on input parameters used to determine the scaling exponent, a. Because the input parameters are selected by the researcher and little published guidance exists to aid in their selection, this research aimed to examine the effects of changing input parameters on DFA of theoretical time series with known values of a in order to determine best practices for their selection and improve the analysis's accuracy and robustness. To this end, theoretical time series were generated and subjected to DFA where the data length, the noise type cutoff range, and the size of the scaling region were varied. The value of a was determined for all combinations of input parameters and the effects of varying these parameters were explored using analysis of variance (ANOVA) techniques. The results of the ANOVAs indicated that data length significantly affected the results of DFA, while noise type cutoff ranges and scaling region did not. Based on the results of the ANOVAs as well as other published findings, the largest data length examined, a noise type cutoff range with the known values of a centered within the range, and large and medium sized scaling regions were selected as the optimum input parameters. This set of parameters was then applied to both theoretical time series and real posturography data sets in order to determine whether the refined input parameters produced statistically different results of DFA than did the traditional DFA method. ANOVAs were used to compare the a's calculated using traditional DFA methodology and the optimum input parameters, which suggested that the optimum input parameters yielded more theoretically accurate DFA results than did traditional DFA methodology. While this work was successful in providing some clarification on the requirements of input parameters for DFA, there is still room for future work to even more clearly define optimum DFA input parameters, particularly regarding data length and the size and location of the scaling region. Additional future work may also be done in order to better understand interactions that were present among the DFA method and scaling region factors and also the classification of the subject when the posturography data sets were examined.

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