Merge branch 'tf-lite' into dev

This commit is contained in:
erogol 2020-07-09 11:46:02 +02:00
commit 79c5e15fa9
7 changed files with 242 additions and 7 deletions

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@ -0,0 +1,44 @@
# Convert Tensorflow Tacotron2 model to TF-Lite binary
import tensorflow as tf
import argparse
from TTS.utils.io import load_config
from TTS.utils.text.symbols import symbols, phonemes, make_symbols
from TTS.tf.utils.generic_utils import setup_model
from TTS.tf.utils.io import load_checkpoint
from TTS.tf.utils.tflite import convert_tacotron2_to_tflite
parser = argparse.ArgumentParser()
parser.add_argument('--tf_model',
type=str,
help='Path to target torch model to be converted to TF.')
parser.add_argument('--config_path',
type=str,
help='Path to config file of torch model.')
parser.add_argument('--output_path',
type=str,
help='path to tflite output binary.')
args = parser.parse_args()
# Set constants
CONFIG = load_config(args.config_path)
# load the model
c = CONFIG
num_speakers = 0
num_chars = len(phonemes) if c.use_phonemes else len(symbols)
model = setup_model(num_chars, num_speakers, c, enable_tflite=True)
model.build_inference()
model = load_checkpoint(model, args.tf_model)
model.decoder.set_max_decoder_steps(1000)
# create tflite model
tflite_model = convert_tacotron2_to_tflite(model)
# save tflite binary
with open(args.output_path, 'wb') as f:
f.write(tflite_model)
print(f'Tflite Model size is {len(tflite_model) / (1024.0 * 1024.0)} MBs.')

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@ -58,12 +58,16 @@ class Decoder(keras.layers.Layer):
#pylint: disable=unused-argument
def __init__(self, frame_dim, r, attn_type, use_attn_win, attn_norm, prenet_type,
prenet_dropout, use_forward_attn, use_trans_agent, use_forward_attn_mask,
use_location_attn, attn_K, separate_stopnet, speaker_emb_dim, **kwargs):
use_location_attn, attn_K, separate_stopnet, speaker_emb_dim, enable_tflite, **kwargs):
super(Decoder, self).__init__(**kwargs)
self.frame_dim = frame_dim
self.r_init = tf.constant(r, dtype=tf.int32)
self.r = tf.constant(r, dtype=tf.int32)
self.output_dim = r * self.frame_dim
self.separate_stopnet = separate_stopnet
self.enable_tflite = enable_tflite
# layer constants
self.max_decoder_steps = tf.constant(1000, dtype=tf.int32)
self.stop_thresh = tf.constant(0.5, dtype=tf.float32)
@ -105,6 +109,7 @@ class Decoder(keras.layers.Layer):
def set_r(self, new_r):
self.r = tf.constant(new_r, dtype=tf.int32)
self.output_dim = self.frame_dim * new_r
def build_decoder_initial_states(self, batch_size, memory_dim, memory_length):
zero_frame = tf.zeros([batch_size, self.frame_dim])
@ -183,6 +188,7 @@ class Decoder(keras.layers.Layer):
outputs = tf.TensorArray(dtype=tf.float32, size=0, clear_after_read=False, dynamic_size=True)
attentions = tf.TensorArray(dtype=tf.float32, size=0, clear_after_read=False, dynamic_size=True)
stop_tokens = tf.TensorArray(dtype=tf.float32, size=0, clear_after_read=False, dynamic_size=True)
# pre-computes
self.attention.process_values(memory)
@ -226,7 +232,70 @@ class Decoder(keras.layers.Layer):
outputs = tf.reshape(outputs, [B, -1, self.frame_dim])
return outputs, stop_tokens, attentions
def decode_inference_tflite(self, memory, states):
"""Inference with TF-Lite compatibility. It assumes
batch_size is 1"""
# init states
# dynamic_shape is not supported in TFLite
outputs = tf.TensorArray(dtype=tf.float32,
size=self.max_decoder_steps,
element_shape=tf.TensorShape(
[self.output_dim]),
clear_after_read=False,
dynamic_size=False)
# stop_flags = tf.TensorArray(dtype=tf.bool,
# size=self.max_decoder_steps,
# element_shape=tf.TensorShape(
# []),
# clear_after_read=False,
# dynamic_size=False)
attentions = ()
stop_tokens = ()
# pre-computes
self.attention.process_values(memory)
# iter vars
stop_flag = tf.constant(False, dtype=tf.bool)
step_count = tf.constant(0, dtype=tf.int32)
def _body(step, memory, states, outputs, stop_flag):
frame_next = states[0]
prenet_next = self.prenet(frame_next, training=False)
output, stop_token, states, _ = self.step(prenet_next,
states,
None,
training=False)
stop_token = tf.math.sigmoid(stop_token)
stop_flag = tf.greater(stop_token, self.stop_thresh)
stop_flag = tf.reduce_all(stop_flag)
# stop_flags = stop_flags.write(step, tf.logical_not(stop_flag))
outputs = outputs.write(step, tf.reshape(output, [-1]))
return step + 1, memory, states, outputs, stop_flag
cond = lambda step, m, s, o, stop_flag: tf.equal(stop_flag, tf.constant(False, dtype=tf.bool))
step_count, memory, states, outputs, stop_flag = \
tf.while_loop(cond,
_body,
loop_vars=(step_count, memory, states, outputs,
stop_flag),
parallel_iterations=32,
swap_memory=True,
maximum_iterations=self.max_decoder_steps)
outputs = outputs.stack()
outputs = tf.gather(outputs, tf.range(step_count))
outputs = tf.expand_dims(outputs, [0])
outputs = tf.transpose(outputs, [1, 0, 2])
outputs = tf.reshape(outputs, [1, -1, self.frame_dim])
return outputs, stop_tokens, attentions
def call(self, memory, states, frames=None, memory_seq_length=None, training=False):
if training:
return self.decode(memory, states, frames, memory_seq_length)
if self.enable_tflite:
return self.decode_inference_tflite(memory, states)
return self.decode_inference(memory, states)

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@ -24,7 +24,8 @@ class Tacotron2(keras.models.Model):
forward_attn_mask=False,
location_attn=True,
separate_stopnet=True,
bidirectional_decoder=False):
bidirectional_decoder=False,
enable_tflite=False):
super(Tacotron2, self).__init__()
self.r = r
self.decoder_output_dim = decoder_output_dim
@ -32,6 +33,7 @@ class Tacotron2(keras.models.Model):
self.bidirectional_decoder = bidirectional_decoder
self.num_speakers = num_speakers
self.speaker_embed_dim = 256
self.enable_tflite = enable_tflite
self.embedding = keras.layers.Embedding(num_chars, 512, name='embedding')
self.encoder = Encoder(512, name='encoder')
@ -50,7 +52,8 @@ class Tacotron2(keras.models.Model):
attn_K=attn_K,
separate_stopnet=separate_stopnet,
speaker_emb_dim=self.speaker_embed_dim,
name='decoder')
name='decoder',
enable_tflite=enable_tflite)
self.postnet = Postnet(postnet_output_dim, 5, name='postnet')
@tf.function(experimental_relax_shapes=True)
@ -82,6 +85,22 @@ class Tacotron2(keras.models.Model):
print(output_frames.shape)
return decoder_frames, output_frames, attentions, stop_tokens
@tf.function(
experimental_relax_shapes=True,
input_signature=[
tf.TensorSpec([1, None], dtype=tf.int32),
],)
def inference_tflite(self, characters):
B, T = shape_list(characters)
embedding_vectors = self.embedding(characters, training=False)
encoder_output = self.encoder(embedding_vectors, training=False)
decoder_states = self.decoder.build_decoder_initial_states(B, 512, T)
decoder_frames, stop_tokens, attentions = self.decoder(encoder_output, decoder_states, training=False)
postnet_frames = self.postnet(decoder_frames, training=False)
output_frames = decoder_frames + postnet_frames
print(output_frames.shape)
return decoder_frames, output_frames, attentions, stop_tokens
def build_inference(self, ):
input_ids = tf.random.uniform([1, 4], maxval=10, dtype=tf.int32)
self(input_ids)

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@ -76,7 +76,7 @@ def count_parameters(model, c):
return model.count_params()
def setup_model(num_chars, num_speakers, c):
def setup_model(num_chars, num_speakers, c, enable_tflite=False):
print(" > Using model: {}".format(c.model))
MyModel = importlib.import_module('TTS.tf.models.' + c.model.lower())
MyModel = getattr(MyModel, c.model)
@ -99,5 +99,6 @@ def setup_model(num_chars, num_speakers, c):
location_attn=c.location_attn,
attn_K=c.attention_heads,
separate_stopnet=c.separate_stopnet,
bidirectional_decoder=c.bidirectional_decoder)
bidirectional_decoder=c.bidirectional_decoder,
enable_tflite=enable_tflite)
return model

42
tf/utils/io.py Normal file
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@ -0,0 +1,42 @@
import pickle
import datetime
import tensorflow as tf
def save_checkpoint(model, optimizer, current_step, epoch, r, output_path, **kwargs):
state = {
'model': model.weights,
'optimizer': optimizer,
'step': current_step,
'epoch': epoch,
'date': datetime.date.today().strftime("%B %d, %Y"),
'r': r
}
state.update(kwargs)
pickle.dump(state, open(output_path, 'wb'))
def load_checkpoint(model, checkpoint_path):
checkpoint = pickle.load(open(checkpoint_path, 'rb'))
chkp_var_dict = {var.name: var.numpy() for var in checkpoint['model']}
tf_vars = model.weights
for tf_var in tf_vars:
layer_name = tf_var.name
try:
chkp_var_value = chkp_var_dict[layer_name]
except KeyError:
class_name = list(chkp_var_dict.keys())[0].split("/")[0]
layer_name = f"{class_name}/{layer_name}"
chkp_var_value = chkp_var_dict[layer_name]
tf.keras.backend.set_value(tf_var, chkp_var_value)
if 'r' in checkpoint.keys():
model.decoder.set_r(checkpoint['r'])
return model
def load_tflite_model(tflite_path):
tflite_model = tf.lite.Interpreter(model_path=tflite_path)
tflite_model.allocate_tensors()
return tflite_model

20
tf/utils/tflite.py Normal file
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@ -0,0 +1,20 @@
import tensorflow as tf
def convert_tacotron2_to_tflite(model):
tacotron2_concrete_function = model.inference_tflite.get_concrete_function()
converter = tf.lite.TFLiteConverter.from_concrete_functions(
[tacotron2_concrete_function]
)
converter.experimental_new_converter = True
converter.optimizations = [tf.lite.Optimize.DEFAULT]
converter.target_spec.supported_ops = [tf.lite.OpsSet.TFLITE_BUILTINS,
tf.lite.OpsSet.SELECT_TF_OPS]
tflite_model = converter.convert()
return tflite_model
def load_tflite_model(tflite_path):
tflite_model = tf.lite.Interpreter(model_path=tflite_path)
tflite_model.allocate_tensors()
return tflite_model

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@ -70,6 +70,31 @@ def run_model_tf(model, inputs, CONFIG, truncated, speaker_id=None, style_mel=No
return decoder_output, postnet_output, alignments, stop_tokens
def run_model_tflite(model, inputs, CONFIG, truncated, speaker_id=None, style_mel=None):
if CONFIG.use_gst and style_mel is not None:
raise NotImplementedError(' [!] GST inference not implemented for TfLite')
if truncated:
raise NotImplementedError(' [!] Truncated inference not implemented for TfLite')
if speaker_id is not None:
raise NotImplementedError(' [!] Multi-Speaker not implemented for TfLite')
# get input and output details
input_details = model.get_input_details()
output_details = model.get_output_details()
# reshape input tensor for the new input shape
model.resize_tensor_input(input_details[0]['index'], inputs.shape)
model.allocate_tensors()
detail = input_details[0]
input_shape = detail['shape']
model.set_tensor(detail['index'], inputs)
# run the model
model.invoke()
# collect outputs
decoder_output = model.get_tensor(output_details[0]['index'])
postnet_output = model.get_tensor(output_details[1]['index'])
# tflite model only returns feature frames
return decoder_output, postnet_output, None, None
def parse_outputs_torch(postnet_output, decoder_output, alignments, stop_tokens):
postnet_output = postnet_output[0].data.cpu().numpy()
decoder_output = decoder_output[0].data.cpu().numpy()
@ -86,6 +111,12 @@ def parse_outputs_tf(postnet_output, decoder_output, alignments, stop_tokens):
return postnet_output, decoder_output, alignment, stop_tokens
def parse_outputs_tflite(postnet_output, decoder_output):
postnet_output = postnet_output[0]
decoder_output = decoder_output[0]
return postnet_output, decoder_output
def trim_silence(wav, ap):
return wav[:ap.find_endpoint(wav)]
@ -164,22 +195,31 @@ def synthesis(model,
style_mel = numpy_to_torch(style_mel, torch.float, cuda=use_cuda)
inputs = numpy_to_torch(inputs, torch.long, cuda=use_cuda)
inputs = inputs.unsqueeze(0)
else:
elif backend == 'tf':
# TODO: handle speaker id for tf model
style_mel = numpy_to_tf(style_mel, tf.float32)
inputs = numpy_to_tf(inputs, tf.int32)
inputs = tf.expand_dims(inputs, 0)
elif backend == 'tflite':
style_mel = numpy_to_tf(style_mel, tf.float32)
inputs = numpy_to_tf(inputs, tf.int32)
inputs = tf.expand_dims(inputs, 0)
# synthesize voice
if backend == 'torch':
decoder_output, postnet_output, alignments, stop_tokens = run_model_torch(
model, inputs, CONFIG, truncated, speaker_id, style_mel)
postnet_output, decoder_output, alignment, stop_tokens = parse_outputs_torch(
postnet_output, decoder_output, alignments, stop_tokens)
else:
elif backend == 'tf':
decoder_output, postnet_output, alignments, stop_tokens = run_model_tf(
model, inputs, CONFIG, truncated, speaker_id, style_mel)
postnet_output, decoder_output, alignment, stop_tokens = parse_outputs_tf(
postnet_output, decoder_output, alignments, stop_tokens)
elif backend == 'tflite':
decoder_output, postnet_output, alignment, stop_tokens = run_model_tflite(
model, inputs, CONFIG, truncated, speaker_id, style_mel)
postnet_output, decoder_output = parse_outputs_tflite(
postnet_output, decoder_output)
# convert outputs to numpy
# plot results
wav = None