logo
You can not select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
Readme
Files and versions

2.8 KiB

Audio Embedding with Neural Network Fingerprint

Author: Jael Gu


Description

The audio embedding operator converts an input audio into a dense vector which can be used to represent the audio clip's semantics. Each vector represents for an audio clip with a fixed length of around 1s. This operator generates audio embeddings with fingerprinting method introduced by Neural Audio Fingerprint. The model is implemented in Pytorch. We've also trained the nnfp model with FMA dataset (& some noise audio) and shared weights in this operator. The nnfp operator is suitable for audio fingerprinting.


Code Example

Generate embeddings for the audio "test.wav".

Write a pipeline with explicit inputs/outputs name specifications:

from towhee.dc2 import pipe, ops, DataCollection

p = (
    pipe.input('path')
        .map('path', 'frame', ops.audio_decode.ffmpeg())
        .map('frame', 'vecs', ops.audio_embedding.nnfp(device='cpu'))
        .output('path', 'vecs')
)

DataCollection(p('test.wav')).show()


Factory Constructor

Create the operator via the following factory method

audio_embedding.nnfp(model_name='nnfp_default', model_path=None, framework='pytorch')

Parameters:

model_name: str

Model name to create nnfp model with different parameters.

model_path: str

The path to model. If None, it will load default model weights.

framework: str

The framework of model implementation. Default value is "pytorch" since the model is implemented in Pytorch.


Interface

An audio embedding operator generates vectors in numpy.ndarray given towhee audio frames.

__call__(data)

Parameters:

data: List[towhee.types.audio_frame.AudioFrame]

Input audio data is a list of towhee audio frames. The audio input should be at least 1s.

Returns:

numpy.ndarray

Audio embeddings in shape (num_clips, 128). Each embedding stands for features of an audio clip with length of 1s.


save_model(format='pytorch', path='default')

Parameters:

format: str

Format used to save model, defaults to 'pytorch'. Accepted formats: 'pytorch', 'torchscript, 'onnx', 'tensorrt' (in progress)

path: str

Path to save model, defaults to 'default'. The default path is under 'saved' in the same directory of operator cache.

from towhee import ops

op = ops.audio_embedding.nnfp(device='cpu').get_op()
op.save_model('onnx', 'test.onnx')
PosixPath('/Home/.towhee/operators/audio-embedding/nnfp/main/test.onnx')

Fine-tune

To fine-tune this operator, please refer to this example guide.

2.8 KiB

Audio Embedding with Neural Network Fingerprint

Author: Jael Gu


Description

The audio embedding operator converts an input audio into a dense vector which can be used to represent the audio clip's semantics. Each vector represents for an audio clip with a fixed length of around 1s. This operator generates audio embeddings with fingerprinting method introduced by Neural Audio Fingerprint. The model is implemented in Pytorch. We've also trained the nnfp model with FMA dataset (& some noise audio) and shared weights in this operator. The nnfp operator is suitable for audio fingerprinting.


Code Example

Generate embeddings for the audio "test.wav".

Write a pipeline with explicit inputs/outputs name specifications:

from towhee.dc2 import pipe, ops, DataCollection

p = (
    pipe.input('path')
        .map('path', 'frame', ops.audio_decode.ffmpeg())
        .map('frame', 'vecs', ops.audio_embedding.nnfp(device='cpu'))
        .output('path', 'vecs')
)

DataCollection(p('test.wav')).show()


Factory Constructor

Create the operator via the following factory method

audio_embedding.nnfp(model_name='nnfp_default', model_path=None, framework='pytorch')

Parameters:

model_name: str

Model name to create nnfp model with different parameters.

model_path: str

The path to model. If None, it will load default model weights.

framework: str

The framework of model implementation. Default value is "pytorch" since the model is implemented in Pytorch.


Interface

An audio embedding operator generates vectors in numpy.ndarray given towhee audio frames.

__call__(data)

Parameters:

data: List[towhee.types.audio_frame.AudioFrame]

Input audio data is a list of towhee audio frames. The audio input should be at least 1s.

Returns:

numpy.ndarray

Audio embeddings in shape (num_clips, 128). Each embedding stands for features of an audio clip with length of 1s.


save_model(format='pytorch', path='default')

Parameters:

format: str

Format used to save model, defaults to 'pytorch'. Accepted formats: 'pytorch', 'torchscript, 'onnx', 'tensorrt' (in progress)

path: str

Path to save model, defaults to 'default'. The default path is under 'saved' in the same directory of operator cache.

from towhee import ops

op = ops.audio_embedding.nnfp(device='cpu').get_op()
op.save_model('onnx', 'test.onnx')
PosixPath('/Home/.towhee/operators/audio-embedding/nnfp/main/test.onnx')

Fine-tune

To fine-tune this operator, please refer to this example guide.