Unfortunately, the EMU-SDMS is currently out of funding.
We at the IPS will do what we can to fix bugs, security issues or necessary adjustments to new versions of R; but we cannot currently work on new features or performance improvements.
We would be very glad if funding in academia allowed for more technical staff to maintain software used by the research community.
wrassp is a wrapper for R around Michel Scheffers’s libassp (Advanced Speech
Signal Processor). The libassp library aims at providing functionality
for handling speech signal files in most common audio formats and for
performing analyses common in phonetic science/speech science. This
includes the calculation of formants, fundamental frequency, root mean
square, auto correlation, a variety of spectral analyses, zero crossing
rate, filtering etc. This wrapper provides R with a large subset of
libassp’s signal processing functions and provides them to the user in a
(hopefully) user-friendly manner.
This package is part of the next iteration of the EMU Speech Database Management System which aims to be as close to an all-in-one solution for generating, manipulating, querying, analyzing and managing speech databases as possible. For an overview of the system please visit this URL: https://ips-lmu.github.io/EMU.html.
install.packages("wrassp")wrassp are written in C make sure
your system fulfills the requirements for package development (see here)):library(devtools)
install_github("IPS-LMU/wrassp", build_vignettes = TRUE)library("wrassp")path2wav <- list.files(system.file("extdata", package = "wrassp"), pattern = glob2rx("*.wav"), full.names = TRUE)[1]res=forest(path2wav, toFile=FALSE)plot(res$fm[1:100,1],type='l')An introduction to the wraspp package vignette:vignette('wrassp_intro')acfana(): Analysis of short-term autocorrelation
functionafdiff(): Computes the first difference of the
signalaffilter(): Filters the audio signal (see docs for
types)cepstrum(): Short-term cepstral analysiscssSpectrum(): Cepstral smoothed version of
dftSpectrum()dftSpectrum(): Short-term DFT spectral analysisforest(): Formant estimationksvF0(): F0 analysis of the signallpsSpectrum(): Linear Predictive smoothed version of
dftSpectrum()mhsF0(): Pitch analysis of the speech signal using
Michel’s/Modified Harmonic Sieve algorithmrfcana(): Linear Prediction analysisrmsana(): Analysis of short-term Root Mean Square
amplitudezcrana(): Analysis of the averages of the short-term
positive and negative zero-crossing rates(see the respective R documentation for more details on all of these functions)
read.AsspDataObj(): read an existing SSFF file into a
AsspDataObj which is its in-memory equivalent.write.AsspDataObj(): write a AsspDataObj
out to a SSFF file.Prerequisite: docker is installed on your machine
docker pull rocker/r-develdocker imagesdocker run --rm rocker/r-devel:latest R --versiondocker run --rm -ti -v $(pwd):/wrassp -v wrassp_packages:/output rocker/r-devel:latest bashIn the interactive shell you just started:
apt update && apt install --yes pandoc tidy qpdfRD -e 'install.packages(c("tibble","compare", "rmarkdown", "knitr", "testthat"))'RD CMD build --resave-data wrasspRD CMD check --as-cran wrassp_*.tar.gzcp wrassp_*.tar.gz /outputdocker pull kalibera/rchkdocker run --rm -v wrassp_packages:/rchk/packages kalibera/rchk:latest /rchk/packages/wrassp_x.y.z.tar.gzlibsonly/wrassp/libs/wrassp.so{maa|b|ffi}check on the named
docker volumeRaphael Winkelmann
Lasse Bombien
Markus Jochim (current maintainer)
Affiliations