Optimizing Acoustic Signal Detection


[Up] [Top]

Documentation for package ‘ohun’ version 1.0.1

Help Pages

consensus_detection Remove ambiguous detections
diagnose_detection Evaluate the performance of a sound event detection procedure
energy_detector Detects the start and end of sound events
get_envelopes Extract absolute amplitude envelopes
get_templates Find templates representative of the structural variation of sound events
label_detection Label detections from a sound event detection procedure
label_spectro Plot a labeled spectrogram
lbh1 Long-billed hermit recording
lbh2 Long-billed hermit recording
lbh_reference Example data frame of a selection table including all sound events of interests.
merge_overlaps Merge overlapping selections
optimize_energy_detector Optimize energy-based sound event detection
optimize_template_detector Optimize acoustic template detection
plot_detection Plot detection and reference annotations
split_acoustic_data Splits sound files and associated annotations
summarize_acoustic_data Summarize information about file format in an acoustic data set
summarize_diagnostic Summarize detection diagnostics
summarize_reference Summarize temporal and frequency dimensions of annotations and gaps
template_correlator Acoustic templates correlator using time-frequency cross-correlation
template_detector Acoustic template detection from time-frequency cross-correlations