Files
paper_2025/python/save_inv_data_rect-lp.py
j-hartling 7e1aa8721a Made fig_invariance_rect_lp.pdf and corresponding appendix figure.
Adjusted fig_invariance_log_hp.pdf with 2nd yaxis in dB.

Co-authored-by: Copilot <copilot@github.com>
2026-04-27 18:18:34 +02:00

110 lines
3.6 KiB
Python

import numpy as np
from thunderhopper.modeltools import load_data, save_data
from thunderhopper.filetools import search_files, crop_paths
from thunderhopper.filters import sosfilter
from misc_functions import draw_noise_segment
from IPython import embed
# GENERAL SETTINGS:
example_file = 'Omocestus_rufipes_DJN_32-40s724ms-48s779ms'
search_target = ['*', example_file][0]
data_paths = search_files(search_target, excl='noise', dir='../data/processed/')
noise_path = '../data/processed/white_noise_sd-1.npz'
save_path = '../data/inv/rect_lp/'
# ANALYSIS SETTINGS:
mode = ['pure', 'noise'][1]
example_scales = np.array([0.1, 0.3, 1, 3, 10])
scales = np.geomspace(0.01, 100, 1000)
scales = np.unique(np.concatenate(([0], scales, example_scales)))
cutoffs = np.array([np.nan, 2500, 250, 25])
# PREPARATION:
if mode == 'noise':
pure_noise = np.load(noise_path)['raw']
# EXECUTION:
for data_path, name in zip(data_paths, crop_paths(data_paths)):
save_detailed = example_file in name
print(f'Processing {name}')
# Get filtered song (prior to envelope extraction):
data, config = load_data(data_path, files='raw')
song, rate = data['raw'], config['rate']
# Get song segment to be analyzed:
time = np.arange(song.shape[0]) / rate
start, end = data['songs_0'].ravel()
segment = (time >= start) & (time <= end)
# Normalize song component:
song /= song[segment].std()
if mode == 'noise':
# Get normalized noise component:
noise = draw_noise_segment(pure_noise, song.shape[0])
noise /= noise[segment].std()
# Prepare storage:
measure_filt = np.zeros_like(scales)
measure_env = np.zeros((scales.size, len(cutoffs)), dtype=float)
if save_detailed:
# Prepare optional storage:
shape = (song.shape[0], example_scales.size)
snip_raw = np.zeros(shape)
snip_filt = np.zeros(shape)
snip_env = np.zeros(shape + (len(cutoffs),))
# Execute piecewise:
for i, scale in enumerate(scales):
# Get scaled mixture:
mix = song * scale
if mode == 'noise':
mix += noise
# Process mixture:
mix = sosfilter(mix, rate, config['bp_fcut'], 'bp',
padtype='fixed', padlen=config['padlen'])
mix_rect = np.abs(mix)
# Store non-envelope results:
measure_filt[i] = mix[segment].std()
if save_detailed and scale in example_scales:
scale_ind = np.nonzero(example_scales == scale)[0][0]
snip_raw[:, scale_ind] = mix
snip_filt[:, scale_ind] = mix
# Process piecewise again:
for j, cutoff in enumerate(cutoffs):
if np.isnan(cutoff):
mix_env = mix_rect
else:
mix_env = sosfilter(mix_rect, rate, cutoff, 'lp',
padtype='even', padlen=config['padlen'])
# Store envelope results:
measure_env[i, j] = mix_env[segment].std()
if save_detailed and scale in example_scales:
snip_env[:, scale_ind, j] = mix_env
# Save analysis results:
if save_path is not None:
archive = dict(
scales=scales,
example_scales=example_scales,
cutoffs=cutoffs,
measure_filt=measure_filt,
measure_env=measure_env,
)
if save_detailed:
archive.update(
snip_raw=snip_raw,
snip_filt=snip_filt,
snip_env=snip_env,
)
save_name = save_path + name + '_' + mode
save_data(save_name, archive, config, overwrite=True)
print('Done.')
embed()