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soundRec.py
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#!/usr/bin/env python
# Modified from:
# http://stackoverflow.com/questions/892199/detect-record-audio-in-python
# Records distinct sounds and discards intermittent silences
from sys import byteorder
from array import array
from struct import pack
import pyaudio
import wave
import os.path
import time
THRESHOLD = 1800
CHUNK_SIZE = 2048
FORMAT = pyaudio.paInt16
RATE = 48000
END_TIME = 50*1024
def is_silent(snd_data):
"Returns 'True' if below the 'silent' threshold"
return max(snd_data) < THRESHOLD
def normalize(snd_data):
"Average the volume out"
MAXIMUM = 16384
times = float(MAXIMUM)/max(abs(i) for i in snd_data)
r = array('h')
for i in snd_data:
r.append(int(i*times))
return r
def trim(snd_data):
"Trim the blank spots at the start and end"
def _trim(snd_data):
snd_started = False
r = array('h')
for i in snd_data:
if not snd_started and abs(i)>THRESHOLD:
snd_started = True
r.append(i)
elif snd_started:
r.append(i)
return r
# Trim to the left
snd_data = _trim(snd_data)
# Trim to the right
snd_data.reverse()
snd_data = _trim(snd_data)
snd_data.reverse()
return snd_data
def add_silence(snd_data, seconds):
"Add silence to the start and end of 'snd_data' of length 'seconds' (float)"
r = array('h', [0 for i in xrange(int(seconds*RATE))])
r.extend(snd_data)
r.extend([0 for i in xrange(int(seconds*RATE))])
return r
def record():
"""
Record a word or words from the microphone and
return the data as an array of signed shorts.
Normalizes the audio, trims silence from the
start and end, and pads with 0.5 seconds of
blank sound to make sure VLC et al can play
it without getting chopped off.
"""
print "Opening Stream"
p = pyaudio.PyAudio()
stream = p.open(format=FORMAT, channels=1, rate=RATE,
input=True, output=True,
frames_per_buffer=CHUNK_SIZE)
num_silent = 0
snd_started = False
r = array('h')
print "Waiting for sound"
while 1:
# little endian, signed short
snd_data = array('h', stream.read(CHUNK_SIZE))
if byteorder == 'big':
snd_data.byteswap()
silent = is_silent(snd_data)
if not silent and not snd_started:
snd_started = True
print "Sound started"
if snd_started:
r.extend(snd_data)
if snd_started and silent:
num_silent += 1
elif snd_started:
num_silent = 0
if CHUNK_SIZE * num_silent > END_TIME:
print "Sound ended"
break
sample_width = p.get_sample_size(FORMAT)
stream.stop_stream()
stream.close()
p.terminate()
#r = trim(r)
r = normalize(r)
r = add_silence(r, .5)
return sample_width, r
def record_to_file():
"Records from the microphone and outputs the resulting data to 'path'"
sample_width, data = record()
data = pack('<' + ('h'*len(data)), *data)
wf = wave.open("snd_{}.wav".format(time.strftime("%Y%m%d_%H%M%S")), 'wb')
wf.setnchannels(1)
wf.setsampwidth(sample_width)
wf.setframerate(RATE)
wf.writeframes(data)
wf.close()
if __name__ == '__main__':
while 1:
record_to_file()