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从视频中提取音频
安装 moviepy
pip install moviepy
相关代码:
audio_file = work_path + '\\out.wav'
video = VideoFileClip(video_file)
video.audio.write_audiofile(audio_file,ffmpeg_params=['-ar','16000','-ac','1'])
根据静音对音频分段
使用音频库 pydub,安装:
pip install pydub
第一种方法:
# 这里silence_thresh是认定小于-70dBFS以下的为silence,发现小于 sound.dBFS * 1.3 部分超过 700毫秒,就进行拆分。这样子分割成一段一段的。
sounds = split_on_silence(sound, min_silence_len = 500, silence_thresh= sound.dBFS * 1.3)
sec = 0
for i in range(len(sounds)):
s = len(sounds[i])
sec += s
print('split duration is ', sec)
print('dBFS: {0}, max_dBFS: {1}, duration: {2}, split: {3}'.format(round(sound.dBFS,2),round(sound.max_dBFS,2),sound.duration_seconds,len(sounds)))
感觉分割的时间不对,不好定位,我们换一种方法:
# 通过搜索静音的方法将音频分段
# 参考:https://wqian.net/blog/2018/1128-python-pydub-split-mp3-index.html
timestamp_list = detect_nonsilent(sound,500,sound.dBFS*1.3,1)
for i in range(len(timestamp_list)):
d = timestamp_list[i][1] - timestamp_list[i][0]
print("Section is :", timestamp_list[i], "duration is:", d)
print('dBFS: {0}, max_dBFS: {1}, duration: {2}, split: {3}'.format(round(sound.dBFS,2),round(sound.max_dBFS,2),sound.duration_seconds,len(timestamp_list)))
输出结果如下:
感觉这样好处理一些
使用百度语音识别
现在百度智能云平台创建一个应用,获取 API Key 和 Secret Key:
获取 Access Token
使用百度 AI 产品需要授权,一定量是免费的,生成字幕够用了。
'''
百度智能云获取 Access Token
'''
def fetch_token():
params = {'grant_type': 'client_credentials',
'client_id': API_KEY,
'client_secret': SECRET_KEY}
post_data = urlencode(params)
if (IS_PY3):
post_data = post_data.encode( 'utf-8')
req = Request(TOKEN_URL, post_data)
try:
f = urlopen(req)
result_str = f.read()
except URLError as err:
print('token http response http code : ' + str(err.errno))
result_str = err.reason
if (IS_PY3):
result_str = result_str.decode()
print(result_str)
result = json.loads(result_str)
print(result)
if ('access_token' in result.keys() and 'scope' in result.keys()):
print(SCOPE)
if SCOPE and (not SCOPE in result['scope'].split(' ')): # SCOPE = False 忽略检查
raise DemoError('scope is not correct')
print('SUCCESS WITH TOKEN: %s EXPIRES IN SECONDS: %s' % (result['access_token'], result['expires_in']))
return result['access_token']
else:
raise DemoError('MAYBE API_KEY or SECRET_KEY not correct: access_token or scope not found in token response')
使用 Raw 数据进行合成
这里使用百度语音极速版来合成文字,因为官方介绍专有GPU服务集群,识别响应速度较标准版API提升2倍及识别准确率提升15%。适用于近场短语音交互,如手机语音搜索、聊天输入等场景。 支持上传完整的录音文件,录音文件时长不超过60秒。实时返回识别结果
def asr_raw(speech_data, token):
length = len(speech_data)
if length == 0:
# raise DemoError('file %s length read 0 bytes' % AUDIO_FILE)
raise DemoError('file length read 0 bytes')
params = {'cuid': CUID, 'token': token, 'dev_pid': DEV_PID}
#测试自训练平台需要打开以下信息
#params = {'cuid': CUID, 'token': token, 'dev_pid': DEV_PID, 'lm_id' : LM_ID}
params_query = urlencode(params)
headers = {
'Content-Type': 'audio/' + FORMAT + '; rate=' + str(RATE),
'Content-Length': length
}
url = ASR_URL + "?" + params_query
# print post_data
req = Request(ASR_URL + "?" + params_query, speech_data, headers)
try:
begin = timer()
f = urlopen(req)
result_str = f.read()
# print("Request time cost %f" % (timer() - begin))
except URLError as err:
# print('asr http response http code : ' + str(err.errno))
result_str = err.reason
if (IS_PY3):
result_str = str(result_str, 'utf-8')
return result_str
生成字幕
生成字幕其实就是语音识别的应用,将识别后的内容按照 srt 字幕格式组装起来就 OK 了。具体字幕格式的内容可以参考上面的文章,代码如下:
idx = 0
for i in range(len(timestamp_list)):
d = timestamp_list[i][1] - timestamp_list[i][0]
data = sound[timestamp_list[i][0]:timestamp_list[i][1]].raw_data
str_rst = asr_raw(data, token)
result = json.loads(str_rst)
# print("rst is ", result)
# print("rst is ", rst['err_no'][0])
if result['err_no'] == 0:
text.append('{0}\n{1} --> {2}\n'.format(idx, format_time(timestamp_list[i][0]/ 1000), format_time(timestamp_list[i][1]/ 1000)))
text.append( result['result'][0])
text.append('\n')
idx = idx + 1
print(format_time(timestamp_list[i][0]/ 1000), "txt is ", result['result'][0])
with open(srt_file,"r+") as f:
f.writelines(text)
总结
我在视频网站下载了一个视频来作测试,极速模式从速度和识别率来说都是最好的,感觉比网易见外平台还好用。
到此这篇关于使用Python和百度语音识别生成视频字幕的文章就介绍到这了,更多相关Python 百度语音识别生成视频字幕内容请搜索脚本之家以前的文章或继续浏览下面的相关文章希望大家以后多多支持脚本之家!
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