hainazhu
Add application file
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import re
import sys
import json
from torch.utils.data import Dataset
import torchaudio
from torchaudio.functional import resample
import torch
import numpy as np
from torch.nn.utils.rnn import pad_sequence
def check_lryics(lyric):
_FILTER_STRING = [
'作词', '作曲', '编曲', '【', '策划',
'录音', '混音', '母带', ':', '制作',
'版权', '校对', '演奏', '制作', '伴奏'
]
for item in _FILTER_STRING:
if item in lyric:
return True
return False
def process_lyrics(lines):
lyric_part = []
timestamp_part = []
timestamp_pattern = re.compile(r'\[\d+:\d+(\.\d+)?\]')
for i, line in enumerate(lines):
# 删除前几行的特定信息
if i<10 and check_lryics(line):
continue
# 检查是否包含有效的时间戳和歌词内容
if timestamp_pattern.match(line):
timestamp_end = line.rfind(']')
lyrics = line[timestamp_end + 1:].strip()
timestamps = line[:timestamp_end + 1]
if ':' in lyrics:
if len(lyrics.split(":")[0]) <=5:
lyrics = "".join(lyrics.split(":")[1:])
# if lyrics: # 确保歌词部分不是空的
# lyric_part.append(lyrics)
# timestamp_part.append(timestamps)
# print(processed_lyrics)
return timestamp_part, lyric_part
def get_timestamps(timestamp_part):
# 转换为秒
timestamps = []
for line in timestamp_part:
match = re.match(r'\[(\d+):(\d+)(\.\d+)?\]', line)
if match:
minutes = int(match.group(1))
seconds = float(match.group(2))
millis = float(match.group(3)) if match.group(3) else 0
total_seconds = minutes * 60 + seconds + millis
timestamps.append(total_seconds)
return timestamps
def process_lyrics_lrc(lyrics):
timestamp_part, lyric_part = process_lyrics(lyrics)
# print(timestamp_part)
# print(lyric_part)
timestamps = get_timestamps(timestamp_part)
# print(timestamps)
if len(timestamps) == 0:
# print(f'{lyric_path}')
return []
slice_start = timestamps[0]
slice_start_idx = 0
output_list = []
for i in range(1, len(timestamps)):
# 如果累积时间超过30秒,则进行切分, 如果整体小于30s, 整句会被丢掉
if timestamps[i] - slice_start > 30:
output_list.append(f'[{str(slice_start)}:{str(timestamps[i])}]' + ", ".join(lyric_part[slice_start_idx:i]))
slice_start = timestamps[i]
slice_start_idx = i
return output_list
def process_lyrics_yrc(lyrics):
timestamps, lyric_part = extract_lrc(lyrics)
# timestamp_part, lyric_part = process_lyrics(lyrics)
# import pdb; pdb.set_trace()
# print(timestamp_part)
# print(lyric_part)
# timestamps = get_timestamps(timestamp_part)
# print(timestamps)
if len(timestamps) == 0:
# print(f'{lyric_path}')
return []
slice_start = timestamps[0]
slice_start_idx = 0
output_list = []
for i in range(1, len(timestamps)):
# 如果累积时间超过30秒,则进行切分
if timestamps[i] - slice_start > 30:
output_list.append(f'[{str(slice_start)}:{str(timestamps[i])}]' + ", ".join(lyric_part[slice_start_idx:i]))
slice_start = timestamps[i]
slice_start_idx = i
# import pdb; pdb.set_trace()
return output_list
def extract_lrc(lyrics):
timestamp_part, lyric_part = [], []
for i, text in enumerate(lyrics):
# 提取中括号内的内容
bracket_content = re.search(r'\[(.*?)\]', text).group(1)
bracket_content = bracket_content.split(',')
# 提取小括号内的内容
parentheses_content = re.findall(r'\((.*?)\)', text)
# 提取其他内容
other_content = re.sub(r'\[(.*?)\]|\((.*?)\)', '', text).strip()
# 数据怎么处理?
# import pdb; pdb.set_trace()
if i<10 and check_lryics(other_content):
continue
# import pdb; pdb.set_trace()
timestamp_part.append(float(bracket_content[0])/1000)
lyric_part.append(other_content)
# import pdb; pdb.set_trace()
return timestamp_part, lyric_part
class WYYSongDataset(Dataset):
def __init__(self,
metadata_path:str,
sr:int = 0,
use_lang = ['en', 'zh-cn'],
num_examples = -1,
):
self.sr = sr
self.use_lang = use_lang
self._load_metadata(metadata_path)
# buffer
self.lyric_buffer = {}
if(num_examples<=0):
self.dataset_len = len(self.data)
self.random_slc = False
else:
self.dataset_len = num_examples
self.random_slc = True
# 读取jsonl文件
def _load_metadata(self, metadata_path):
with open(metadata_path) as fp:
lines = fp.readlines()
self.data = []
for line in lines:
item = json.loads(line)
# if item['lrc-lyric'] is not None and item['yrc-lyric'] is not None:
if 'lyrics' in item and 'lang_info' in item:
if len(item['lyrics']) > 0:
for lang in self.use_lang:
if lang in item['lang_info'] and item['lang_info'][lang]['proportion'] > 0.8 and item['lang_info'][lang]['probability'] > 0.9:
# if '伴奏' not in item['path'] and "cloud" in item['path']:
if '伴奏' not in item['path']:
self.data.append(item)
def __len__(self):
return self.dataset_len
def __getitem__(self, idx):
try_cnt = 0
while True:
if(self.random_slc):
idx = np.random.randint(0, len(self.data))
yrc_lyrics = []
lrc_lyrics = []
try:
info = self.data[idx]
# audio path
path:str = info["path"]
# 读取歌词段落
if 'lyrics' not in info:
if idx not in self.lyric_buffer:
# 字级别align的歌词
if info['yrc-lyric'] is not None:
with open(info['yrc-lyric']) as f_in:
yrc_lyric = json.load(f_in)
yrc_lyrics = process_lyrics_yrc(yrc_lyric['lyrics'][:-1])
# 句子级align的歌词
if info['lrc-lyric'] is not None:
with open(info['lrc-lyric']) as f_in:
lrc_lyric = json.load(f_in)
lrc_lyrics = process_lyrics_lrc(lrc_lyric['lyrics'][:-1])
# 优先使用字级别align的歌词
if len(yrc_lyrics) > 0:
lyrics = yrc_lyrics
else:
lyrics = lrc_lyrics
self.lyric_buffer[idx] = lyrics
# TODO 每段歌词进行长度筛选,过滤掉太长和太短的歌曲
else:
lyrics = self.lyric_buffer[idx]
else:
lyrics = info['lyrics']
# 随机选取一个lyric段落
ly_id = torch.randint(low=1, high=len(lyrics), size=(1,))[0].item()
# ly_id = 0
lyric = lyrics[ly_id]
st, et, lyric = self.parse_lyric(lyric)
assert et - st < 20
# 文本过滤
lyric = re.sub(r'【.*?】', '', lyric)
if 'zh-cn' in info['lang_info'] and info['lang_info']['zh-cn']['proportion'] > 0.8:
assert 100 > len(lyric.replace(" ", "")) > 5
if ':' in lyrics:
if len(lyrics.split(":")[0]) <=5:
lyrics = "".join(lyrics.split(":")[1:])
if ':' in lyrics:
if len(lyrics.split(":")[0]) <=5:
lyrics = "".join(lyrics.split(":")[1:])
if 'en' in info['lang_info'] and info['lang_info']['en']['proportion'] > 0.8:
assert 100 > len(lyric.split()) > 5
if ':' in lyrics:
if len(lyrics.split(":")[0].split()) <=3:
lyrics = "".join(lyrics.split(":")[1:])
if ':' in lyrics:
if len(lyrics.split(":")[0].split()) <=3:
lyrics = "".join(lyrics.split(":")[1:])
# 读取音频文件
cur_sample_rate = torchaudio.info(path).sample_rate
offset = int(cur_sample_rate*st)
num_frames = int(cur_sample_rate * (et -st))
chunk, _ = torchaudio.load(path, frame_offset=offset, num_frames=num_frames)
# 随机选取一个channel
if(chunk.shape[0]>1):
chunk = chunk[torch.randint(chunk.shape[0], size=(1,)),:].float()
else:
chunk = chunk[[0],:].float()
if(cur_sample_rate!=self.sr):
# print('a:',cur_sample_rate,chunk.shape)
chunk = torchaudio.functional.resample(chunk, cur_sample_rate, self.sr)
return chunk, lyric, [st, et], path
except:
print("Error loadding ", info["path"])
try_cnt += 1
idx = np.random.randint(0, len(self.data))
if(try_cnt>10):
raise FileNotFoundError()
def parse_lyric(self, lyric):
pattern = r'\[(\d+\.\d+):(\d+\.\d+)\](.*)'
match = re.search(pattern, lyric)
start_time = float(match.group(1))
end_time = float(match.group(2))
content = match.group(3)
return start_time, end_time, content
def collect_song(data_list):
audios = pad_sequence([data[0].t() for data in data_list], batch_first=True, padding_value=0).transpose(1,2)
lyrics = [data[1] for data in data_list]
st_et = [data[2] for data in data_list]
paths = [data[3] for data in data_list]
return audios, lyrics, st_et