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# Copyright (c) Facebook, Inc. and its affiliates.
# All rights reserved.
#
# This source code is licensed under the license found in the
# LICENSE file in the root directory of this source tree.
import json
import time
import math
from typing import Dict, List, Optional, Union
from pathlib import Path
from simuleval.data.segments import TextSegment, SpeechSegment, EmptySegment
from simuleval.data.dataloader import SpeechToTextDataloader, TextToTextDataloader
from argparse import Namespace
try:
import soundfile
IS_IMPORT_SOUNDFILE = True
except Exception:
IS_IMPORT_SOUNDFILE = False
class Instance(object):
"""
Instance class. An instance class contains one source and target sentence pair.
it send the source to and read hypotheses from the agent.
Args:
index (int): the index of the sentence pair in the corpus.
dataloader (GenericDataloader): the dataloader used to load the sentence pair.
args (Namespace): command line arguments.
"""
def __init__(
self,
index: int,
dataloader: Optional[Union[SpeechToTextDataloader, TextToTextDataloader]],
args: Optional[Namespace],
):
self.index = index
self.finish_prediction = False
self.dataloader = dataloader
if self.dataloader is not None:
self.source = self.dataloader[self.index]["source"]
self.reference = self.dataloader[self.index]["target"]
self.reset()
if args is not None:
self.args = args
self.latency_unit = args.eval_latency_unit
def reset(self):
self.step = 0
self.elapsed = []
self.prediction_list = []
self.delays = []
self.start_time = None
self.metrics = {}
def step_to_elapsed(self, *args):
raise NotImplementedError
def step_to_delay(self, step):
raise NotImplementedError
@property
def finish(self):
return self.finish_prediction
@finish.setter
def finish(self, status: bool):
self.finish_prediction = status
def preprocess_target(self, target: str) -> str:
"""
Preprocess the target, for example tokenization.
"""
return target
def preprocess_source(self, source: str):
"""
Preprocess the source, for example tokenization.
"""
raise NotImplementedError
def receive_prediction(self, prediction: str):
raise NotImplementedError
def send_source(self, *args):
raise NotImplementedError
@property
def source_length(self):
raise NotImplementedError
@property
def prediction_length(self):
return len(self.prediction_list)
@property
def target_length_latency(self):
raise NotImplementedError
@property
def prediction(self):
raise NotImplementedError
@property
def source_info(self):
return self.source
@property
def reference_length(self) -> int:
if self.latency_unit == "word":
return len(self.reference.split(" "))
elif self.latency_unit == "char":
return len(self.reference.strip())
else:
raise NotImplementedError
def summarize(self):
return {
"index": self.index,
"prediction": self.prediction,
"delays": self.delays,
"elapsed": self.elapsed,
"prediction_length": self.prediction_length,
"reference": self.reference,
"source": self.source_info,
"source_length": self.source_length,
"metric": self.metrics,
}
@classmethod
def from_json(cls, json_string):
info = json.loads(json_string)
instance = cls(info["index"], None, None)
instance.prediction_list = info["prediction"].split()
instance.delays = info["delays"]
instance.elapsed = info["elapsed"]
instance.reference = info["reference"]
instance.metrics = info["metric"]
instance.finish_prediction = True
return instance
class TextInputInstance(Instance):
@property
def source_length(self):
return len(self.source)
@property
def source_info(self):
return " ".join(self.source)
def step_to_elapsed(self, *args):
return 0
def step_to_delay(self, step):
return step
def send_source(self, config_dict: Optional[Dict]):
if self.step >= self.source_length:
segment = EmptySegment(finished=True)
else:
segment = TextSegment(
index=self.step,
content=self.source[self.step],
finished=(self.step == self.source_length - 1),
)
self.step += 1
return segment
class TextOutputInstance(Instance):
def receive_prediction(self, prediction: TextSegment):
"""
Handler for receiving new predictions
"""
if self.finish_prediction or prediction.is_empty:
self.finish_prediction = prediction.finished
return
if self.start_time is None:
self.start_time = time.time()
self.finish_prediction = prediction.finished
if len(prediction.content) == 0:
return
current_time = time.time()
if self.latency_unit == "word":
prediction_list = prediction.content.strip().split()
elif self.latency_unit == "char":
prediction_list = list(prediction.content.replace(" ", ""))
else:
raise NotImplementedError
self.prediction_list += prediction_list
self.elapsed += [self.step_to_elapsed(self.step, current_time)] * len(
prediction_list
)
self.delays += [self.step_to_delay(self.step)] * len(prediction_list)
@property
def target_length_latency(self):
if self.latency_unit == "word":
return len(self.reference.split(" "))
elif self.latency_unit == "char":
return len(self.reference)
else:
raise NotImplementedError
@property
def prediction(self) -> str:
if self.latency_unit == "word":
return "".join(list(self.prediction_list)).replace("▁", " ")
elif self.latency_unit == "char":
return "".join(list(self.prediction_list)).replace("▁", "")
else:
raise NotImplementedError
class SpeechInputInstance(Instance):
def __init__(
self,
index: int,
dataloader: Optional[SpeechToTextDataloader],
args: Optional[Namespace],
):
super().__init__(index, dataloader, args)
self.sample_rate_value = None
self.sample_list = None
self.source_finished_reading = False
self.dataloader: SpeechToTextDataloader
@property
def sample_rate(self):
if self.sample_rate_value is None:
self.audio_info = self.dataloader.get_source_audio_info(self.index)
self.sample_rate_value = self.audio_info.samplerate
return self.sample_rate_value
@property
def samples(self) -> List[float]:
if self.sample_list is None:
self.sample_list = self.source
return self.sample_list
@property
def is_finish_source(self):
return self.step == len(self.samples)
def send_source(self, segment_size=10):
if self.step == 0:
self.start_time = time.time()
assert segment_size >= 1, "instance size has to larger than 1 ms"
num_samples = math.ceil(segment_size / 1000 * self.sample_rate)
if self.step < len(self.samples):
if self.step + num_samples >= len(self.samples):
# Pad zeros if the requested number of samples
# are more than available samples.
samples = self.samples[self.step :] # noqa E203
is_finished = True
self.source_finished_reading = True
else:
samples = self.samples[self.step : self.step + num_samples] # noqa E203
is_finished = False
self.step = min(self.step + num_samples, len(self.samples))
segment = SpeechSegment(
index=self.len_sample_to_ms(self.step),
content=samples,
sample_rate=self.audio_info.samplerate,
finished=is_finished,
)
else:
# Finish reading this audio
segment = EmptySegment(
index=self.len_sample_to_ms(self.step),
finished=True,
)
self.source_finished_reading = True
return segment
@property
def source_length(self):
# In milliseconds
return self.len_sample_to_ms(len(self.samples))
@property
def source_info(self):
return str(self.audio_info).split("\n")
def len_sample_to_ms(self, length):
assert getattr(self, "sample_rate", None), "Read a audio file first"
return length * 1000 / self.sample_rate
def len_ms_to_samples(self, length):
assert getattr(self, "sample_rate", None), "Read a audio file first"
return math.ceil(length / 1000 * self.sample_rate)
def step_to_delay(self, step):
return self.len_sample_to_ms(self.step)
def step_to_elapsed(self, step, current_time):
return self.len_sample_to_ms(step) + (current_time - self.start_time) * 1000
class SpeechOutputInstance(Instance):
def __init__(self, index, dataloader, args):
super().__init__(index, dataloader, args)
self.prediction_time = 0
self.durations = []
self.intervals = []
self.target_sample_rate = -1
self.dataloader: SpeechToTextDataloader # For now we only support speech input.
assert IS_IMPORT_SOUNDFILE, "Please make sure soundfile is properly installed."
assert self.args.output is not None, "'output' is needed for speech output"
@property
def wav_path(self):
wav_dir_path = Path(self.args.output) / "wavs"
wav_dir_path.mkdir(exist_ok=True)
wav_path = wav_dir_path / f"{self.index}_pred.wav"
return wav_path.absolute()
@property
def prediction(self):
return self.wav_path
def summarize(self):
samples = []
self.intervals = []
self.silences = []
if len(self.prediction_list) > 0:
# start from the first segment offset
start = prev_end = prediction_offset = self.delays[0]
for i, delay in enumerate(self.delays):
start = max(prev_end, delay)
if start > prev_end:
# Wait source speech, add discontinuity with silence
samples += [0.0] * int(
self.target_sample_rate * (start - prev_end) / 1000
)
self.silences.append(start - prev_end)
samples += self.prediction_list[i]
duration = self.durations[i]
prev_end = start + duration
self.intervals.append([start, duration])
soundfile.write(self.wav_path, samples, self.target_sample_rate)
else:
# For empty prediction
prediction_offset = self.source_length
return {
"index": self.index,
"prediction": self.wav_path.as_posix(),
"delays": self.delays,
"durations": self.durations,
"prediction_offset": prediction_offset,
"elapsed": [],
"intervals": self.intervals,
"prediction_length": len(samples) / self.target_sample_rate,
"source_length": self.source_length,
"reference": self.reference,
"source": self.dataloader.get_source_audio_path(self.index),
}
def receive_prediction(self, segment: SpeechSegment):
"""
Handler for receiving new predictions
"""
if self.start_time is None:
self.start_time = time.time()
if self.finish_prediction and (
not hasattr(self, "source_finished_reading") or self.source_finished_reading
):
return
self.finish_prediction = segment.finished
if segment.is_empty:
return
if len(segment.content) == 0:
return
current_time = time.time()
pred_duration = 1000 * len(segment.content) / segment.sample_rate
if self.target_sample_rate < 0:
self.target_sample_rate = segment.sample_rate
self.durations.append(pred_duration)
self.prediction_list.append(segment.content)
self.elapsed.append(self.step_to_elapsed(self.step, current_time))
self.delays.append(self.step_to_delay(self.step))
if self.finish_prediction:
self.summarize()
class SpeechToTextInstance(SpeechInputInstance, TextOutputInstance):
pass
class TextToTextInstance(TextInputInstance, TextOutputInstance):
pass
class SpeechToSpeechInstance(SpeechInputInstance, SpeechOutputInstance):
pass
INSTANCE_TYPE_DICT = {
"speech-text": SpeechToTextInstance,
"text-text": TextToTextInstance,
"speech-speech": SpeechToSpeechInstance,
"youtube-text": SpeechToTextInstance,
"youtube-speech": SpeechToSpeechInstance,
}
class LogInstance:
def __init__(self, info: str) -> None:
self.info = json.loads(info.strip())
self.intervals = []
for key, value in self.info.items():
setattr(self, key, value)
self.index = self.info["index"]
self.reference = self.info.get("reference", "")
self.reference_length = len(
self.reference.split(" ")
) # ToDo: temporary solution, make it configurable
self.source_length = self.info.get("source_length") # just for testing!
self.finish_prediction = True
self.metrics = {}