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PaddleSpeech/demos/keyword_spotting/README.md

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([简体中文](./README_cn.md)|English)
# KWS (Keyword Spotting)
## Introduction
KWS(Keyword Spotting) is a technique to recognize keyword from a giving speech audio.
This demo is an implementation to recognize keyword from a specific audio file. It can be done by a single command or a few lines in python using `PaddleSpeech`.
## Usage
### 1. Installation
see [installation](https://github.com/PaddlePaddle/PaddleSpeech/blob/develop/docs/source/install.md).
You can choose one way from easy, meduim and hard to install paddlespeech.
### 2. Prepare Input File
The input of this demo should be a WAV file(`.wav`), and the sample rate must be the same as the model.
Here are sample files for this demo that can be downloaded:
```bash
wget -c https://paddlespeech.bj.bcebos.com/kws/hey_snips.wav https://paddlespeech.bj.bcebos.com/kws/non-keyword.wav
```
### 3. Usage
- Command Line(Recommended)
```bash
paddlespeech kws --input ./hey_snips.wav
paddlespeech kws --input ./non-keyword.wav
```
Usage:
```bash
paddlespeech kws --help
```
Arguments:
- `input`(required): Audio file to recognize.
- `threshold`Score threshold for kws. Default: `0.8`.
- `model`: Model type of kws task. Default: `mdtc_heysnips`.
- `config`: Config of kws task. Use pretrained model when it is None. Default: `None`.
- `ckpt_path`: Model checkpoint. Use pretrained model when it is None. Default: `None`.
- `device`: Choose device to execute model inference. Default: default device of paddlepaddle in current environment.
- `verbose`: Show the log information.
Output:
```bash
# Input file: ./hey_snips.wav
Score: 1.000, Threshold: 0.8, Is keyword: True
# Input file: ./non-keyword.wav
Score: 0.000, Threshold: 0.8, Is keyword: False
```
- Python API
```python
import paddle
from paddlespeech.cli.kws import KWSExecutor
kws_executor = KWSExecutor()
result = kws_executor(
audio_file='./hey_snips.wav',
threshold=0.8,
model='mdtc_heysnips',
config=None,
ckpt_path=None,
device=paddle.get_device())
print('KWS Result: \n{}'.format(result))
```
Output:
```bash
KWS Result:
Score: 1.000, Threshold: 0.8, Is keyword: True
```
### 4.Pretrained Models
Here is a list of pretrained models released by PaddleSpeech that can be used by command and python API:
| Model | Language | Sample Rate
| :--- | :---: | :---: |
| mdtc_heysnips | en | 16k