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# Pipeline: Audio Embedding using VGGish
3 years ago
Authors: Jael Gu
## Overview
This pipeline extracts features of a given audio file using a VGGish model implemented in Pytorch. This is a supervised model pre-trained with [AudioSet](https://research.google.com/audioset/), which contains over 2 million sound clips.
## Interface
**Input Arguments:**
- filepath:
- the input audio in `.wav`
- supported types: `str` (path to the audio)
**Pipeline Output:**
The Operator returns a tuple `Tuple[('embs', numpy.ndarray)]` containing following fields:
- embs:
- embeddings of input audio
- data type: numpy.ndarray
- shape: (num_clips,128)
## How to use
1. Install [Towhee](https://github.com/towhee-io/towhee)
```bash
$ pip3 install towhee
```
> You can refer to [Getting Started with Towhee](https://towhee.io/) for more details. If you have any questions, you can [submit an issue to the towhee repository](https://github.com/towhee-io/towhee/issues).
2. Run it with Towhee
```python
>>> from towhee import pipeline
>>> embedding_pipeline = pipeline('towhee/audio-embedding-vggish')
>>> embedding = embedding_pipeline('path/to/your/audio')
```
## How it works
This pipeline includes a main operator: [audio-embedding](https://towhee.io/operators?limit=30&page=1&filter=3%3Aaudio-embedding) (default: [towhee/torch-vggish](https://hub.towhee.io/towhee/torch-vggish)). The audio embedding operator encodes audio file and finally output a set of vectors of the given audio.