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Tool helping psychologists and other behavioural scientists to analyze mouse movement (and other 2-D trajectory) data. Bundles together several functions computing spatial measures (maximum absolute deviation, area under the curve, sample entropy) or providing a shorthand for often-used procedures.
You can install mousetRajectory from CRAN with
install.packages("mousetRajectory")
Alternatively, you can keep up to date and install the latest development version of mousetRajectory from github.com/mc-schaaf/mousetRajectory with:
if(!require("devtools")){install.packages("devtools")}
::install_github("mc-schaaf/mousetRajectory") devtools
Currently, the following functions are featured:
is_monotonic()
checks whether your timestamps make
sense and warns you if they don’t.is_monotonic_along_ideal()
checks whether your
trajectories make sense and warns you if they don’t.time_circle_left()
tells you the time at which the
starting area was left.time_circle_entered()
tells you the time at which the
end area was entered.point_crosses()
tells you how often a certain value on
the x or y axis is crossed.direction_changes()
tells you how often the direction
along the x or y axis changes.interp1()
directs you to the interpolation function
from the awesome signal
package. Thus, you do not have to
call library("signal")
. Such time-saving, much wow. Also,
not having to attach the signal
package avoids ambiguity
between signal::filter()
and dplyr::filter()
in your search path.interp2()
is a convenience wrapper to
interp1()
that rescales the time for you.starting_angle()
computes (not only starting)
angles.auc()
computes the (signed) Area Under the Curve
(AUC).max_ad()
computes the (signed) Maximum Absolute
Deviation (MAD).curvature()
computes the curvature.index_max_velocity()
computes the time to peak
velocity, assuming equidistant times between data points.index_max_acceleration()
computes the time to peak
acceleration, assuming equidistant times between data points.sampen()
computes the sample entropy.You can find an example application as well as the full documentation at mc-schaaf.github.io/mousetRajectory/.
Please report bugs to github.com/mc-schaaf/mousetRajectory/issues.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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