The project aim is to distill the Automatic Speech Recognition research.
At the beginning, you can load a ready-to-use pipeline with a pre-trained model.
Benefit from the eager TensorFlow 2.0
and freely monitor model weights, activations or gradients.
import automatic_speech_recognition as asr
file = 'to/test/sample.wav' # sample rate 16 kHz, and 16 bit depth
sample = asr.utils.read_audio(file)
pipeline = asr.load('deepspeech2', lang='en')
pipeline.model.summary() # TensorFlow model
sentences = pipeline.predict([sample])
We support english (thanks to Open Seq2Seq). The evaluation results of the English benchmark LibriSpeech dev-clean are in the table. To reference, the DeepSpeech (Mozilla) achieves around 7.5% WER, whereas the state-of-the-art (RWTH Aachen University) equals 2.3% WER (recent evaluation results can be found here). Both of them, use the external language model to boost results. By comparison, humans achieve 5.83% WER here (LibriSpeech dev-clean)
Model Name | Decoder | WER-dev |
---|---|---|
deepspeech2 |
greedy | 6.71 |
Shortly it turns out that you need to adjust pipeline a little bit. Take a look at the CTC Pipeline. The pipeline is responsible for connecting a neural network model with all non-differential transformations (features extraction or prediction decoding). Pipeline components are independent. You can adjust them to your needs e.g. use more sophisticated feature extraction, different data augmentation, or add the language model decoder (static n-grams or huge transformers). You can do much more like distribute the training using the Strategy, or experiment with mixed precision policy.
import numpy as np
import tensorflow as tf
import automatic_speech_recognition as asr
dataset = asr.dataset.Audio.from_csv('train.csv', batch_size=32)
dev_dataset = asr.dataset.Audio.from_csv('dev.csv', batch_size=32)
alphabet = asr.text.Alphabet(lang='en')
features_extractor = asr.features.FilterBanks(
features_num=160,
winlen=0.02,
winstep=0.01,
winfunc=np.hanning
)
model = asr.model.get_deepspeech2(
input_dim=160,
output_dim=29,
rnn_units=800,
is_mixed_precision=False
)
optimizer = tf.optimizers.Adam(
lr=1e-4,
beta_1=0.9,
beta_2=0.999,
epsilon=1e-8
)
decoder = asr.decoder.GreedyDecoder()
pipeline = asr.pipeline.CTCPipeline(
alphabet, features_extractor, model, optimizer, decoder
)
pipeline.fit(dataset, dev_dataset, epochs=25)
pipeline.save('/checkpoint')
test_dataset = asr.dataset.Audio.from_csv('test.csv')
wer, cer = asr.evaluate.calculate_error_rates(pipeline, test_dataset)
print(f'WER: {wer} CER: {cer}')
You can use pip:
pip install automatic-speech-recognition
Otherwise clone the code and create a new environment via conda:
git clone https://github.com/rolczynski/Automatic-Speech-Recognition.git
conda env create -f=environment.yml # or use: environment-gpu.yml
conda activate Automatic-Speech-Recognition
The fundamental repositories:
- Baidu - DeepSpeech2 - A PaddlePaddle implementation of DeepSpeech2 architecture for ASR
- NVIDIA - Toolkit for efficient experimentation with Speech Recognition, Text2Speech and NLP
- RWTH Aachen University - The RWTH extensible training framework for universal recurrent neural networks
- TensorFlow - The implementation of DeepSpeech2 model
- Mozilla - DeepSpeech - A TensorFlow implementation of Baidu's DeepSpeech architecture
- Espnet - End-to-End Speech Processing Toolkit
- Sean Naren - Speech Recognition using DeepSpeech2
Moreover, you can explore the GitHub using key phrases like ASR
, DeepSpeech
, or Speech-To-Text
.
The list wer_are_we, an attempt at tracking states of the art,
can be helpful too.