| Literature DB >> 27167064 |
Jeska Buhmann1, Frank Desmet1, Bart Moens1, Edith Van Dyck1, Marc Leman1.
Abstract
The expressive features of music can influence the velocity of walking. So far, studies used instructed (and intended) synchronization. But is this velocity effect still present with non-instructed (spontaneous) synchronization? To figure that out, participants were instructed to walk in their own comfort tempo on an indoor track, first in silence and then with tempo-matched music. We compared velocities of silence and music conditions. The results show that some music has an activating influence, increasing velocity and motivation, while other music has a relaxing influence, decreasing velocity and motivation. The influence of musical expression on the velocity of self-paced walking can be predicted with a regression model using only three sonic features explaining 56% of the variance. Phase-coherence between footfall and beat did not contribute to the velocity effect, due to its implied fixed pacing. The findings suggest that the velocity effect depends on vigor entrainment that influences both stride length and pacing. Our findings are relevant for preventing injuries, for gait improvement in walking rehabilitation, and for improving performance in sports activities.Entities:
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Year: 2016 PMID: 27167064 PMCID: PMC4864300 DOI: 10.1371/journal.pone.0154414
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Distribution of resultant vector lengths.
This histogram shows |R| of all 651 trials, where participants walked to a song, revealing two overlapping processes: phase incoherent walking (low |R| values), which is normally distributed, and phase coherent walking, which has an extreme value distribution. The functions estimating those distributions intersect at a value of 0.74.
Division into groups of activating, relaxing and neutral songs, according to different thresholds.
| Multiplication factor of | REL | ACT | NEU | 10 ANOVA’s | |||
|---|---|---|---|---|---|---|---|
| #songs | #songs | #songs |
|
| |||
| 1.0 | 100.03 | 10 | 100.73 | 10 | 10 | 3.02E-05 | 2.71E-05 |
| 1.1 | 99.99 | 8 | 100.76 | 8 | 8 | 5.21E-05 | 4.84E-05 |
| 0.8 | 100.10 | 13 | 100.66 | 18 | 16 | 1.20E-08 | 7.77E-09 |
The most frequently selected sonic features (out of ten models) for stride length.
| Id | Feature description | N | PCC | ||
|---|---|---|---|---|---|
| 60 | Evidence for a period of 6 beats in the average loudness in sub-band 2 in a beat period | −0.14 | 0.03 | 10 | −0.47 |
| 98 | Evidence for a period of 3 beats in the variance of the loudness in sub-band 6 in a beat period | −0.18 | 0.02 | 10 | −0.50 |
| 159 | Evidence for a period of 4 beats in the frequency (in chroma) in the third most salient note in a beat period (frequency = 0 if no third note is present) | −0.18 | 0.05 | 10 | −0.53 |
For each feature we list the feature number (Id), the mean (μc) and standard deviation (σc) of the regression coefficients for these features in the models, the number of times (N) the feature was selected, and the Pearson Correlation Coefficient (PCC).
Fig 2Normalized stride length for stable phase and non-stable phase walking.
The figure depicts the normalized stride length values for different music types (REL, NEU, ACT) in stable phase trials and non-stable phase trials. A normalized stride length of value 1 represents an average stride length that equals the averaged stride length of walking in silence. Higher and lower values respectively indicate bigger or smaller stride length than in silence. Asterisks (*) indicate significance differences at p < .05.