acoustic_fp/sound_profile.py
2025-03-23 20:41:17 -04:00

69 lines
1.7 KiB
Python

import matplotlib.pyplot as plt
import numpy as np
import random
import acoustics.decibel as db
freq_upper = 1000 #size of the frequency spectrum we want to investigate
#freq_div = 10
#freq_bin = freq_upper/freq_div
x = np.array(range(freq_upper)) #initialize frequencies (x-axis)
bkgd = np.zeros(freq_upper)
source = np.zeros(freq_upper)
fav_received = np.zeros(freq_upper)
fav_source = np.zeros(freq_upper)
for i in range(len(bkgd)):
bkgd[i] = -.003*x[i]-60 #input model for background here. each freq is assigned an SNR
bkgd[i] = 10**(bkgd[i]/20)
tonals = [20,40,100,500, 800] #build our threat object here
widths = [2,2,2,2,2] #how diffuse is each tonal
decr = [.8,.8,.8,.90,.90] #sound decrement from ambient
#for i in range(len(source)):
# source[i] = random.randint(0,10)/200
for tone,wide,loud in zip(tonals, widths, decr): #right now the source is based on bkgd
freq = tone - wide//2 #strength, but we will need to just
while freq < tone + wide//2: #assign values
source[freq] = bkgd[i]*(1-loud) #
freq += 1 #
received = bkgd + source
for i in range(freq_upper):
received[i] = 20*np.log10(received[i])
for i in range(freq_upper):
source[i] = 20*np.log10(source[i])
for i in range(freq_upper-1):
fav_received[i] = abs((received[i]-received[i+1])**3)
for i in range(freq_upper):
source[i] = db.dbsub(received[i],bkgd[i]/2)
for i in range(freq_upper-1):
fav_source[i] = abs((source[i]-source[i+1])**3)
plt.plot(x, received, label = "Legacy")
plt.plot(x, source, label = "Distilled")
plt.xlabel("freq (Hz)")
plt.ylabel("SNR")
plt.title("Concept")
plt.legend()
plt.show()
"""plt.plot(x, fav_received, label = "Traces")
plt.plot(x, fav_source+1, label = "Distilled Traces")
plt.legend()
plt.show()
"""