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PaddleSpeech/docs/source/cls/custom_dataset.md

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# Customize Dataset for Audio Classification
Following this tutorial you can customize your dataset for audio classification task by using `paddlespeech`.
A base class of classification dataset is `paddlespeech.audio.dataset.AudioClassificationDataset`. To customize your dataset you should write a dataset class derived from `AudioClassificationDataset`.
Assuming you have some wave files that stored in your own directory. You should prepare a meta file with the information of filepaths and labels. For example the absolute path of it is `/PATH/TO/META_FILE.txt`:
```
/PATH/TO/WAVE_FILE/1.wav cat
/PATH/TO/WAVE_FILE/2.wav cat
/PATH/TO/WAVE_FILE/3.wav dog
/PATH/TO/WAVE_FILE/4.wav dog
```
Here is an example to build your custom dataset in `custom_dataset.py`:
```python
from paddleaudio.datasets.dataset import AudioClassificationDataset
class CustomDataset(AudioClassificationDataset):
meta_file = '/PATH/TO/META_FILE.txt'
# List all the class labels
label_list = [
'cat',
'dog',
]
def __init__(self, **kwargs):
files, labels = self._get_data()
super(CustomDataset, self).__init__(
files=files, labels=labels, feat_type='raw', **kwargs)
def _get_data(self):
'''
This method offer information of wave files and labels.
'''
files = []
labels = []
with open(self.meta_file) as f:
for line in f:
file, label_str = line.strip().split(' ')
files.append(file)
labels.append(self.label_list.index(label_str))
return files, labels
```
Then you can build dataset and data loader from `CustomDataset`:
```python
import paddle
from paddleaudio.features import LogMelSpectrogram
from custom_dataset import CustomDataset
# Feature config should be align with pretrained model
sample_rate = 32000
feat_conf = {
'sr': sample_rate,
'n_fft': 1024,
'hop_length': 320,
'window': 'hann',
'win_length': 1024,
'f_min': 50.0,
'f_max': 14000.0,
'n_mels': 64,
}
train_ds = CustomDataset(sample_rate=sample_rate)
feature_extractor = LogMelSpectrogram(**feat_conf)
train_sampler = paddle.io.DistributedBatchSampler(
train_ds, batch_size=4, shuffle=True, drop_last=False)
train_loader = paddle.io.DataLoader(
train_ds,
batch_sampler=train_sampler,
return_list=True,
use_buffer_reader=True)
```
Train model with `CustomDataset`:
```python
from paddlespeech.cls.models import cnn14
from paddlespeech.cls.models import SoundClassifier
backbone = cnn14(pretrained=True, extract_embedding=True)
model = SoundClassifier(backbone, num_class=len(train_ds.label_list))
optimizer = paddle.optimizer.Adam(
learning_rate=1e-6, parameters=model.parameters())
criterion = paddle.nn.loss.CrossEntropyLoss()
steps_per_epoch = len(train_sampler)
epochs = 10
for epoch in range(1, epochs + 1):
model.train()
for batch_idx, batch in enumerate(train_loader):
waveforms, labels = batch
# Need a padding when lengths of waveforms differ in a batch.
feats = feature_extractor(waveforms)
feats = paddle.transpose(feats, [0, 2, 1])
logits = model(feats)
loss = criterion(logits, labels)
loss.backward()
optimizer.step()
if isinstance(optimizer._learning_rate,
paddle.optimizer.lr.LRScheduler):
optimizer._learning_rate.step()
optimizer.clear_grad()
# Calculate loss
avg_loss = float(loss)
# Calculate metrics
preds = paddle.argmax(logits, axis=1)
num_corrects = (preds == labels).numpy().sum()
num_samples = feats.shape[0]
avg_acc = num_corrects / num_samples
print_msg = 'Epoch={}/{}, Step={}/{}'.format(
epoch, epochs, batch_idx + 1, steps_per_epoch)
print_msg += ' loss={:.4f}'.format(avg_loss)
print_msg += ' acc={:.4f}'.format(avg_acc)
print_msg += ' lr={:.6f}'.format(optimizer.get_lr())
print(print_msg)
```
If you want to save the checkpoint of model and evaluate from a specific dataset, please see `paddlespeech/cli/exp/panns/train.py` for more details.