spectrum_correlation: Measure frequency spectrum correlation

View source: R/spectrum_correlation.R

spectrum_correlationR Documentation

Measure frequency spectrum correlation

Description

spectrum_correlation measures frequency spectrum correlation of sounds referenced in an extended selection table.

Usage

spectrum_correlation(
  X,
  cores = getOption("mc.cores", 1),
  pb = getOption("pb", TRUE),
  cor.method = c("pearson", "spearman", "kendall"),
  spec.smooth = getOption("spec.smooth", 5),
  hop.size = getOption("hop.size", 11.6),
  wl = getOption("wl", NULL),
  ovlp = getOption("ovlp", 70),
  path = getOption("sound.files.path", "."),
  n.bins = 100
)

Arguments

X

The output of set_reference_sounds which is an object of class 'data.frame', 'selection_table' or 'extended_selection_table' (the last 2 classes are created by the function selection_table from the warbleR package) with the reference to the test sounds . Must contain the following columns: 1) "sound.files": name of the .wav files, 2) "selec": unique selection identifier (within a sound file), 3) "start": start time and 4) "end": end time of selections, 5) "bottom.freq": low frequency for bandpass, 6) "top.freq": high frequency for bandpass, 7) "sound.id": ID of sounds used to identify counterparts across distances and 8) "reference": identity of sounds to be used as reference for each test sound (row). See set_reference_sounds for more details on the structure of 'X'.

cores

Numeric vector of length 1. Controls whether parallel computing is applied by specifying the number of cores to be used. Default is 1 (i.e. no parallel computing).

pb

Logical argument to control if progress bar is shown. Default is TRUE.

cor.method

Character string indicating the correlation coefficient to be applied ("pearson", "spearman", or "kendall", see cor).

spec.smooth

Numeric vector of length 1 determining the length of the sliding window used for a sum smooth for power spectrum calculation (in kHz). Default is 5.

hop.size

A numeric vector of length 1 specifying the time window duration (in ms). Default is 11.6 ms, which is equivalent to 512 wl for a 44.1 kHz sampling rate. Ignored if 'wl' is supplied.

wl

a vector with a single even integer number specifying the window length of the spectrogram, default is NULL. If supplied, 'hop.size' is ignored. Odd integers will be rounded up to the nearest even number.

ovlp

Numeric vector of length 1 specifying the percentage of overlap between two consecutive windows, as in spectro. Default is 70.

path

Character string containing the directory path where the sound files are found. Only needed when 'X' is not an extended selection table. If not supplied the current working directory is used.

n.bins

Numeric vector of length 1 specifying the number of frequency bins to use for representing power spectra. Default is 100. If null the raw power spectrum is used (note that this can result in high RAM memory usage for large data sets). Power spectrum values are interpolated using approx.

Details

spectral correlation measures the similarity of two sounds in the frequency domain. The function measures the spectral correlation coefficients of sounds in which a reference playback has been re-recorded at increasing distances. Values range from 1 (identical frequency spectrum, i.e. no degradation) to 0. The 'sound.id' column must be used to indicate the function to only compare sounds belonging to the same category (e.g. song-types). The function will then compare each sound to the corresponding reference sound. Two methods for computing spectral correlation are provided (see 'method' argument). The function uses meanspec internally to compute power spectra. Use spectrum_blur_ratio to extract raw spectra values. NA is returned if at least one the power spectra cannot be computed.

Value

Object 'X' with an additional column, 'spectrum.correlation', containing the computed frequency spectrum correlation coefficients.

Author(s)

Marcelo Araya-Salas (marcelo.araya@ucr.ac.cr)

References

Araya-Salas, M. (2020). baRulho: baRulho: quantifying degradation of (animal) acoustic signals in R. R package version 1.0.2

Apol, C.A., Sturdy, C.B. & Proppe, D.S. (2017). Seasonal variability in habitat structure may have shaped acoustic signals and repertoires in the black-capped and boreal chickadees. Evol Ecol. 32:57-74.

See Also

envelope_correlation, spectrum_blur_ratio

Other quantify degradation: blur_ratio(), detection_distance(), envelope_correlation(), plot_blur_ratio(), plot_degradation(), set_reference_sounds(), signal_to_noise_ratio(), spcc(), spectrum_blur_ratio(), tail_to_signal_ratio()

Examples

{
  # load example data
  data("test_sounds_est")

  # method 1
  # add reference column
  Y <- set_reference_sounds(X = test_sounds_est)

  # run spectrum correlation
  spectrum_correlation(X = Y)

  # method 2
  Y <- set_reference_sounds(X = test_sounds_est, method = 2)
  # spectrum_correlation(X = Y)
}


maRce10/baRulho documentation built on March 30, 2024, 7:50 a.m.