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@alex-bender
Forked from mailletf/gist:c49063d005dfc51a2df6
Created November 4, 2015 08:18
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Simplified version of real-time audio scoring for goal detection
import pyaudio
import librosa
import numpy as np
import requests
# ring buffer will keep the last 2 seconds worth of audio
ringBuffer = RingBuffer(2 * 22050)
def callback(in_data, frame_count, time_info, flag):
audio_data = np.fromstring(in_data, dtype=np.float32)
# we trained on audio with a sample rate of 22050 so we need to convert it
audio_data = librosa.resample(audio_data, 44100, 22050)
ringBuffer.extend(audio_data)
# machine learning model takes wavform as input and
# decides if the last 2 seconds of audio contains a goal
if model.is_goal(ringBuffer.get()):
# GOAL!! Trigger light show
requests.get("http://127.0.0.1:8082/goal")
return (in_data, pyaudio.paContinue)
# function that finds the index of the Soundflower
# input device and HDMI output device
dev_indexes = findAudioDevices()
stream = pa.open(format = pyaudio.paFloat32,
channels = 1,
rate = 44100,
output = True,
input = True,
input_device_index = dev_indexes['input'],
output_device_index = dev_indexes['output'],
stream_callback = callback)
# start the stream
stream.start_stream()
while stream.is_active():
sleep(0.25)
stream.close()
pa.terminate()
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