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313 lines
11 KiB
Markdown
313 lines
11 KiB
Markdown
micmon
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======
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*micmon* is a ML-powered library to detect sounds in an audio stream,
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either from a file or from an audio input. The use case for its development
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has been the creation of a self-built baby monitor to detect the cries
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of my new born through a RaspberryPi + USB microphone, but it should be
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good enough to detect any type of noise or audio if used with a well trained
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model.
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It works by splitting an audio stream into short segments, it calculates the
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FFT and spectrum bins for each of these segments, and it uses such spectrum
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data to train a model to detect the audio. It works well with sounds that are
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loud enough to stand out of the background (it's good at detecting e.g. the
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sound of an alarm clock, not the sound of flying mosquitto), that are long
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enough compared to the size of the chunks (very short sounds will leave a
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very small trace in the spectrum of an audio chunk) and, even better, if
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their frequency bandwidth doesn't overlap a lot with other sounds (it's good
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at detecting the cries of your baby, since his/her voice has a higher pitch
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than yours, but it may not detect difference in the spectral signature of
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the voice of two adult men in the same age group). It's not going to perform
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very well if instead you are trying to use to detect speech - since it operates
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on time-agnostic frequency data from chunks of audio it's not granular enough
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for proper speech-to-text applications, and it wouldn't be robust enough to
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detect differences in voice pitch, tone or accent.
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Dependencies
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------------
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The software uses *ffmpeg* to record and decode audio - check instructions for
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your OS on how to get it installed. It also requires *lame* or any other mp3
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encoder to encode captured audio to mp3.
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Python dependencies:
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```bash
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pip install numpy tensorflow keras
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# Optional, for graphs
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pip install matplotlib
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```
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Installation
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------------
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```bash
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git clone https://github.com/BlackLight/micmon
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cd micmon
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python setup.py install
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```
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Audio capture
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-------------
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Once the software is installed, you can proceed with recording some audio that
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will be used for training the model. First create a directory for your audio
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samples dataset:
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```bash
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# This folder will store our audio samples
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mkdir -p ~/datasets/sound-detect/audio
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# This folder will store the datasets
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# generated from the labelled audio samples
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mkdir -p ~/datasets/sound-detect/data
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# This folder will store the generated
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# Tensorflow models
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mkdir -p ~/models
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cd ~/datasets/sound-detect/audio
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```
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Then create a new sub-folder for your first audio sample and start recording.
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Example:
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```bash
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mkdir sample_1
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cd sample_1
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arecord -D plughw:0,1 -f cd | lame - audio.mp3
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```
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In the example above we are using *arecord* to record from the second channel
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of the first audio device (check a list of available recording devices with
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*arecord -l*) in WAV format, and we are then using the *lame* encoder to
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convert the raw audio to mp3. When done with recording, just Ctrl-C the
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application and your audio file will be ready.
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Audio labelling
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---------------
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In the same directory as your sample (in the example above it will be
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`~/datasets/sound-detect/audio/sample_1`) create a new file named
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`labels.json`. Now open your audio file in Audacity or any audio player
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and identify the audio segments that match your criteria - for example
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when your baby is crying, when the alarm starts, when your neighbour
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starts drilling the wall, or whatever the criteria is. `labels.json`
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should contain a key-value mapping in the form of `start_time -> label`.
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Example:
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```json
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{
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"00:00": "negative",
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"02:13": "positive",
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"04:57": "negative",
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"15:41": "positive",
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"18:24": "negative"
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}
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```
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In the example above, all the audio segments between 00:00 and 02:12 will
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be labelled as negative, all the segments between 02:13 and 04:56 as
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positive, and so on.
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You can now use *micmon* to generate a frequency spectrum dataset out of
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your labelled audio. You can do it either through the `micmon-datagen`
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script or with your own script.
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### micmon-datagen
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Type `micmon-datagen --help` to get a full list of the available options.
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In general, `micmon-datagen` requires a directory that contains the labelled
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audio samples sub-directories as input and a directory where the calculated
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numpy-compressed datasets will be stored. If you want to generate the dataset
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for the audio samples captured on the previous iteration then the command
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will be something like this:
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```bash
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micmon-datagen --low 250 --high 7500 --bins 100 --sample-duration 2 --channels 1 \
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~/datasets/sound-detect/audio ~/models
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```
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The `--low` and `--high` options respectively identify the lowest and highest
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frequencies that should be taken into account in the output spectrum. By default
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these values are 20 Hz and 20 kHz (respectively the lowest and highest frequency
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audible to a healthy and young human ear), but you can narrow down the frequency
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space to only detect the frequencies that you're interested in and to remove
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high-frequency harmonics that may spoil your data. A good way to estimate the
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frequency space is to use e.g. Audacity or any audio equalizer to select the
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segments of your audio that contain the sounds that you want to detect and
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check their dominant frequencies - you definitely want those frequencies to be
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included in your range.
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`--bins` specifies in how many segments/buckets the frequency spectrum should
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be split - 100 bins is the default value. `--sample-duration` specifies the
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duration in seconds for each spectrum data point - 2 seconds is the default
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value, i.e. the audio samples will be read in chunks of 2 seconds each and the
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spectrum will be calculated for each of these chunks. If the sounds you want to
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detect are shorter then you may want to reduce this value.
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### Generate the dataset via script
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The other way to generate the dataset from the audio is through the *micmon* API
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itself. This option also enables you to take a peek at the audio data to better
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calibrate the parameters. For example:
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```python
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import os
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from micmon.audio import AudioDirectory, AudioPlayer, AudioFile
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from micmon.dataset import DatasetWriter
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basedir = os.path.expanduser('~/datasets/sound-detect')
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audio_dir = os.path.join(basedir, 'audio/sample_1')
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datasets_dir = os.path.join(basedir, 'data')
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cutoff_frequencies = [250, 7500]
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# Scan the base audio_dir for labelled audio samples
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audio_dirs = AudioDirectory.scan(audio_dir)
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# Play some audio samples starting from 01:00
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for audio_dir in audio_dirs:
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with AudioFile(audio_dir, start='01:00', duration=5) as reader, \
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AudioPlayer() as player:
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for sample in reader:
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player.play(sample)
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# Plot the audio and spectrum of the audio samples in the first 10 seconds
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# of each audio file.
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for audio_dir in audio_dirs:
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with AudioFile(audio_dir, start=0, duration=10) as reader:
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for sample in reader:
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sample.plot_audio()
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sample.plot_spectrum(low_freq=cutoff_frequencies[0],
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high_freq=cutoff_frequencies[1])
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# Save the spectrum information and labels of the samples to a
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# different compressed file for each audio file.
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for audio_dir in audio_dirs:
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dataset_file = os.path.join(datasets_dir, os.path.basename(audio_dir.path) + '.npz')
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print(f'Processing audio sample {audio_dir.path}')
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with AudioFile(audio_dir) as reader, \
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DatasetWriter(dataset_file,
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low_freq=cutoff_frequencies[0],
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high_freq=cutoff_frequencies[1]) as writer:
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for sample in reader:
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writer += sample
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```
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Training the model
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------------------
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Once you have some `.npz` datasets saved under `~/datasets/sound-detect/data`, you can
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use those datasets to train a Tensorflow+Keras model to classify an audio segment. A full
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example is available under `examples/train.py`:
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```python
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import os
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from keras import layers
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from micmon.dataset import Dataset
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from micmon.model import Model
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# This is a directory that contains the saved .npz dataset files
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datasets_dir = os.path.expanduser('~/datasets/sound-detect/data')
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# This is the output directory where the model will be saved
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model_dir = os.path.expanduser('~/models/sound-detect')
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# This is the number of training epochs for each dataset sample
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epochs = 2
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# Load the datasets from the compressed files.
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# 70% of the data points will be included in the training set,
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# 30% of the data points will be included in the evaluation set
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# and used to evaluate the performance of the model.
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datasets = Dataset.scan(datasets_dir, validation_split=0.3)
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labels = ['negative', 'positive']
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freq_bins = len(datasets[0].samples[0])
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# Create a network with 4 layers (one input layer, two intermediate layers and one output layer).
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# The first intermediate layer in this example will have twice the number of units as the number
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# of input units, while the second intermediate layer will have 75% of the number of
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# input units. We also specify the names for the labels and the low and high frequency range
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# used when sampling.
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model = Model(
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[
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layers.Input(shape=(freq_bins,)),
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layers.Dense(int(2 * freq_bins), activation='relu'),
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layers.Dense(int(0.75 * freq_bins), activation='relu'),
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layers.Dense(len(labels), activation='softmax'),
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],
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labels=labels,
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low_freq=datasets[0].low_freq,
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high_freq=datasets[0].high_freq
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)
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# Train the model
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for epoch in range(epochs):
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for i, dataset in enumerate(datasets):
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print(f'[epoch {epoch+1}/{epochs}] [audio sample {i+1}/{len(datasets)}]')
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model.fit(dataset)
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evaluation = model.evaluate(dataset)
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print(f'Validation set loss and accuracy: {evaluation}')
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# Save the model
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model.save(model_dir, overwrite=True)
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```
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At the end of the process you should find your Tensorflow model saved under `~/models/sound-detect`.
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You can use it in your scripts to classify audio samples from audio sources.
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Classifying audio samples
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-------------------------
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One use case is to analyze an audio file and use the model to detect specific sounds. Example:
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```python
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import os
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from micmon.audio import AudioFile
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from micmon.model import Model
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model_dir = os.path.expanduser('~/models/sound-detect')
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model = Model.load(model_dir)
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cur_seconds = 60
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sample_duration = 2
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with AudioFile('/path/to/some/audio.mp3',
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start=cur_seconds, duration='10:00',
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sample_duration=sample_duration) as reader:
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for sample in reader:
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prediction = model.predict(sample)
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print(f'Audio segment at {cur_seconds} seconds: {prediction}')
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cur_seconds += sample_duration
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```
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Another is to analyze live audio samples imported from an audio device - e.g. a USB microphone.
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Example:
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```python
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import os
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from micmon.audio import AudioDevice
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from micmon.model import Model
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model_dir = os.path.expanduser('~/models/sound-detect')
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model = Model.load(model_dir)
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audio_system = 'alsa' # Supported: alsa and pulse
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audio_device = 'plughw:1,0' # Get list of recognized input devices with arecord -l
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with AudioDevice(audio_system, device=audio_device) as source:
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for sample in source:
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source.pause() # Pause recording while we process the frame
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prediction = model.predict(sample)
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print(prediction)
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source.resume() # Resume recording
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```
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You can use these two examples as blueprints to set up your own automation routines
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with sound detection.
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