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mic.py.save
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executable file
·295 lines (223 loc) · 8.89 KB
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"""
The Mic class handles all interactions with the microphone and speaker.
"""
import os
import json
from wave import open as open_audio
import audioop
import pyaudio
import alteration
# quirky bug where first import doesn't work
try:
import pocketsphinx as ps
except:
import pocketsphinx as ps
class Mic:
speechRec = None
speechRec_persona = None
def __init__(self, lmd, dictd, lmd_persona, dictd_persona, lmd_music=None, dictd_music=None):
"""
Initiates the pocketsphinx instance.
Arguments:
lmd -- filename of the full language model
dictd -- filename of the full dictionary (.dic)
lmd_persona -- filename of the 'Persona' language model (containing, e.g., 'Jasper')
dictd_persona -- filename of the 'Persona' dictionary (.dic)
"""
hmdir = "/usr/local/share/pocketsphinx/model/hmm/en_US/hub4wsj_sc_8k"
if lmd_music and dictd_music:
self.speechRec_music = ps.Decoder(hmm = hmdir, lm = lmd_music, dict = dictd_music)
self.speechRec_persona = ps.Decoder(
hmm=hmdir, lm=lmd_persona, dict=dictd_persona)
self.speechRec = ps.Decoder(hmm=hmdir, lm=lmd, dict=dictd)
def transcribe(self, audio_file_path, PERSONA_ONLY=False, MUSIC=False):
"""
Performs TTS, transcribing an audio file and returning the result.
Arguments:
audio_file_path -- the path to the audio file to-be transcribed
PERSONA_ONLY -- if True, uses the 'Persona' language model and dictionary
MUSIC -- if True, uses the 'Music' language model and dictionary
"""
wavFile = file(audio_file_path, 'rb')
wavFile.seek(44)
if MUSIC:
self.speechRec_music.decode_raw(wavFile)
result = self.speechRec_music.get_hyp()
elif PERSONA_ONLY:
self.speechRec_persona.decode_raw(wavFile)
result = self.speechRec_persona.get_hyp()
else:
self.speechRec.decode_raw(wavFile)
result = self.speechRec.get_hyp()
print "==================="
print "JASPER: " + result[0]
print "==================="
return result[0]
def getScore(self, data):
rms = audioop.rms(data, 2)
score = rms / 3
return score
def fetchThreshold(self):
# TODO: Consolidate all of these variables from the next three
# functions
THRESHOLD_MULTIPLIER = 1.8
AUDIO_FILE = "passive.wav"
RATE = 16000
CHUNK = 1024
# number of seconds to allow to establish threshold
THRESHOLD_TIME = 1
# number of seconds to listen before forcing restart
LISTEN_TIME = 10
# prepare recording stream
audio = pyaudio.PyAudio()
stream = audio.open(format=pyaudio.paInt16,
channels=1,
rate=RATE,
input=True,
frames_per_buffer=CHUNK)
# stores the audio data
frames = []
# stores the lastN score values
lastN = [i for i in range(20)]
# calculate the long run average, and thereby the proper threshold
for i in range(0, RATE / CHUNK * THRESHOLD_TIME):
data = stream.read(CHUNK)
frames.append(data)
# save this data point as a score
lastN.pop(0)
lastN.append(self.getScore(data))
average = sum(lastN) / len(lastN)
# this will be the benchmark to cause a disturbance over!
THRESHOLD = average * THRESHOLD_MULTIPLIER
return THRESHOLD
def passiveListen(self, PERSONA):
"""
Listens for PERSONA in everyday sound
Times out after LISTEN_TIME, so needs to be restarted
"""
THRESHOLD_MULTIPLIER = 1.8
AUDIO_FILE = "passive.wav"
RATE = 16000
CHUNK = 1024
# number of seconds to allow to establish threshold
THRESHOLD_TIME = 1
# number of seconds to listen before forcing restart
LISTEN_TIME = 10
# prepare recording stream
audio = pyaudio.PyAudio()
stream = audio.open(format=pyaudio.paInt16,
channels=1,
rate=RATE,
input=True,
frames_per_buffer=CHUNK)
# stores the audio data
frames = []
# stores the lastN score values
lastN = [i for i in range(30)]
# calculate the long run average, and thereby the proper threshold
for i in range(0, RATE / CHUNK * THRESHOLD_TIME):
data = stream.read(CHUNK)
frames.append(data)
# save this data point as a score
lastN.pop(0)
lastN.append(self.getScore(data))
average = sum(lastN) / len(lastN)
# this will be the benchmark to cause a disturbance over!
THRESHOLD = average * THRESHOLD_MULTIPLIER
# save some memory for sound data
frames = []
# flag raised when sound disturbance detected
didDetect = False
# start passively listening for disturbance above threshold
for i in range(0, RATE / CHUNK * LISTEN_TIME):
data = stream.read(CHUNK)
frames.append(data)
score = self.getScore(data)
if score > THRESHOLD:
didDetect = True
break
# no use continuing if no flag raised
if not didDetect:
print "No disturbance detected"
return
# cutoff any recording before this disturbance was detected
frames = frames[-20:]
# otherwise, let's keep recording for few seconds and save the file
DELAY_MULTIPLIER = 1
for i in range(0, RATE / CHUNK * DELAY_MULTIPLIER):
data = stream.read(CHUNK)
frames.append(data)
# save the audio data
stream.stop_stream()
stream.close()
audio.terminate()
write_frames = open_audio(AUDIO_FILE, 'wb')
write_frames.setnchannels(1)
write_frames.setsampwidth(audio.get_sample_size(pyaudio.paInt16))
write_frames.setframerate(RATE)
write_frames.writeframes(''.join(frames))
write_frames.close()
# check if PERSONA was said
transcribed = self.transcribe(AUDIO_FILE, PERSONA_ONLY=True)
if PERSONA in transcribed:
return (THRESHOLD, PERSONA)
return (False, transcribed)
def activeListen(self, THRESHOLD=None, LISTEN=True, MUSIC=False):
"""
Records until a second of silence or times out after 12 seconds
"""
AUDIO_FILE = "active.wav"
RATE = 16000
CHUNK = 1024
LISTEN_TIME = 12
# user can request pre-recorded sound
if not LISTEN:
if not os.path.exists(AUDIO_FILE):
return None
return self.transcribe(AUDIO_FILE)
# check if no threshold provided
if THRESHOLD == None:
THRESHOLD = self.fetchThreshold()
os.system("aplay -D hw:1,0 ../static/audio/beep_hi.wav")
# prepare recording stream
audio = pyaudio.PyAudio()
stream = audio.open(format=pyaudio.paInt16,
channels=1,
rate=RATE,
input=True,
frames_per_buffer=CHUNK)
frames = []
# increasing the range # results in longer pause after command
# generation
lastN = [THRESHOLD * 1.2 for i in range(30)]
for i in range(0, RATE / CHUNK * LISTEN_TIME):
data = stream.read(CHUNK)
frames.append(data)
score = self.getScore(data)
lastN.pop(0)
lastN.append(score)
average = sum(lastN) / float(len(lastN))
# TODO: 0.8 should not be a MAGIC NUMBER!
if average < THRESHOLD * 0.8:
break
os.system("aplay -D hw:1,0 ../static/audio/beep_lo.wav")
# save the audio data
stream.stop_stream()
stream.close()
audio.terminate()
write_frames = open_audio(AUDIO_FILE, 'wb')
write_frames.setnchannels(1)
write_frames.setsampwidth(audio.get_sample_size(pyaudio.paInt16))
write_frames.setframerate(RATE)
write_frames.writeframes(''.join(frames))
write_frames.close()
# DO SOME AMPLIFICATION
# os.system("sox "+AUDIO_FILE+" temp.wav vol 20dB")
if MUSIC:
return self.transcribe(AUDIO_FILE, MUSIC=True)
return self.transcribe(AUDIO_FILE)
def say(self, phrase, OPTIONS=" -vdefault+m3 -p 40 -s 160 --stdout > say.wav"):
# alter phrase before speaking
phrase = alteration.clean(phrase)
os.system("espeak " + json.dumps(phrase) + OPTIONS)
os.system("aplay -D hw:1,0 say.wav")