极速进化,光速转录,C++版本人工智能实时语音转文字(字幕/语音识别)Whisper.cpp实践

news/2024/11/23 3:52:46/

业界良心OpenAI开源的Whisper模型是开源语音转文字领域的执牛耳者,白璧微瑕之处在于无法通过苹果M芯片优化转录效率,Whisper.cpp 则是 Whisper 模型的 C/C++ 移植版本,它具有无依赖项、内存使用量低等特点,重要的是增加了 Core ML 支持,完美适配苹果M系列芯片。

Whisper.cpp的张量运算符针对苹果M芯片的 CPU 进行了大量优化,根据计算大小,使用 Arm Neon SIMD instrisics 或 CBLAS Accelerate 框架例程,后者对于更大的尺寸特别有效,因为 Accelerate 框架可以使用苹果M系列芯片中提供的专用 AMX 协处理器。

配置Whisper.cpp

老规矩,运行git命令来克隆Whisper.cpp项目:

git clone https://github.com/ggerganov/whisper.cpp.git

随后进入项目的目录:

cd whisper.cpp

项目默认的基础模型不支持中文,这里推荐使用medium模型,通过shell脚本进行下载:

bash ./models/download-ggml-model.sh medium

下载完成后,会在项目的models目录保存ggml-medium.bin模型文件,大小为1.53GB:

whisper.cpp git:(master) cd models   
➜  models git:(master) ll  
total 3006000  
-rw-r--r--  1 liuyue  staff   3.2K  4 21 07:21 README.md  
-rw-r--r--  1 liuyue  staff   7.2K  4 21 07:21 convert-h5-to-ggml.py  
-rw-r--r--  1 liuyue  staff   9.2K  4 21 07:21 convert-pt-to-ggml.py  
-rw-r--r--  1 liuyue  staff    13K  4 21 07:21 convert-whisper-to-coreml.py  
drwxr-xr-x  4 liuyue  staff   128B  4 22 00:33 coreml-encoder-medium.mlpackage  
-rwxr-xr-x  1 liuyue  staff   2.1K  4 21 07:21 download-coreml-model.sh  
-rw-r--r--  1 liuyue  staff   1.3K  4 21 07:21 download-ggml-model.cmd  
-rwxr-xr-x  1 liuyue  staff   2.0K  4 21 07:21 download-ggml-model.sh  
-rw-r--r--  1 liuyue  staff   562K  4 21 07:21 for-tests-ggml-base.bin  
-rw-r--r--  1 liuyue  staff   573K  4 21 07:21 for-tests-ggml-base.en.bin  
-rw-r--r--  1 liuyue  staff   562K  4 21 07:21 for-tests-ggml-large.bin  
-rw-r--r--  1 liuyue  staff   562K  4 21 07:21 for-tests-ggml-medium.bin  
-rw-r--r--  1 liuyue  staff   573K  4 21 07:21 for-tests-ggml-medium.en.bin  
-rw-r--r--  1 liuyue  staff   562K  4 21 07:21 for-tests-ggml-small.bin  
-rw-r--r--  1 liuyue  staff   573K  4 21 07:21 for-tests-ggml-small.en.bin  
-rw-r--r--  1 liuyue  staff   562K  4 21 07:21 for-tests-ggml-tiny.bin  
-rw-r--r--  1 liuyue  staff   573K  4 21 07:21 for-tests-ggml-tiny.en.bin  
-rwxr-xr-x  1 liuyue  staff   1.4K  4 21 07:21 generate-coreml-interface.sh  
-rwxr-xr-x@ 1 liuyue  staff   769B  4 21 07:21 generate-coreml-model.sh  
-rw-r--r--  1 liuyue  staff   1.4G  3 22 16:04 ggml-medium.bin

模型下载以后,在根目录编译可执行文件:

make

程序返回:

➜  whisper.cpp git:(master) make  
I whisper.cpp build info:   
I UNAME_S:  Darwin  
I UNAME_P:  arm  
I UNAME_M:  arm64  
I CFLAGS:   -I.              -O3 -DNDEBUG -std=c11   -fPIC -pthread -DGGML_USE_ACCELERATE  
I CXXFLAGS: -I. -I./examples -O3 -DNDEBUG -std=c++11 -fPIC -pthread  
I LDFLAGS:   -framework Accelerate  
I CC:       Apple clang version 14.0.3 (clang-1403.0.22.14.1)  
I CXX:      Apple clang version 14.0.3 (clang-1403.0.22.14.1)  c++ -I. -I./examples -O3 -DNDEBUG -std=c++11 -fPIC -pthread examples/bench/bench.cpp ggml.o whisper.o -o bench  -framework Accelerate

至此,Whisper.cpp就配置好了。

牛刀小试

现在我们来测试一段语音,看看效果:

./main -osrt -m ./models/ggml-medium.bin -f samples/jfk.wav

这行命令的含义是通过刚才下载ggml-medium.bin模型来对项目中的samples/jfk.wav语音文件进行识别,这段语音是遇刺的美国总统肯尼迪的著名演讲,程序返回:

➜  whisper.cpp git:(master) ./main -osrt -m ./models/ggml-medium.bin -f samples/jfk.wav  
whisper_init_from_file_no_state: loading model from './models/ggml-medium.bin'  
whisper_model_load: loading model  
whisper_model_load: n_vocab       = 51865  
whisper_model_load: n_audio_ctx   = 1500  
whisper_model_load: n_audio_state = 1024  
whisper_model_load: n_audio_head  = 16  
whisper_model_load: n_audio_layer = 24  
whisper_model_load: n_text_ctx    = 448  
whisper_model_load: n_text_state  = 1024  
whisper_model_load: n_text_head   = 16  
whisper_model_load: n_text_layer  = 24  
whisper_model_load: n_mels        = 80  
whisper_model_load: f16           = 1  
whisper_model_load: type          = 4  
whisper_model_load: mem required  = 1725.00 MB (+   43.00 MB per decoder)  
whisper_model_load: adding 1608 extra tokens  
whisper_model_load: model ctx     = 1462.35 MB  
whisper_model_load: model size    = 1462.12 MB  
whisper_init_state: kv self size  =   42.00 MB  
whisper_init_state: kv cross size =  140.62 MB  system_info: n_threads = 4 / 10 | AVX = 0 | AVX2 = 0 | AVX512 = 0 | FMA = 0 | NEON = 1 | ARM_FMA = 1 | F16C = 0 | FP16_VA = 1 | WASM_SIMD = 0 | BLAS = 1 | SSE3 = 0 | VSX = 0 | COREML = 0 |   main: processing 'samples/jfk.wav' (176000 samples, 11.0 sec), 4 threads, 1 processors, lang = en, task = transcribe, timestamps = 1 ...  [00:00:00.000 --> 00:00:11.000]   And so, my fellow Americans, ask not what your country can do for you, ask what you can do for your country.  output_srt: saving output to 'samples/jfk.wav.srt'

只需要11秒,同时语音字幕会写入samples/jfk.wav.srt文件。

英文准确率是百分之百。

现在我们来换成中文语音,可以随便录制一段语音,需要注意的是,Whisper.cpp只支持wav格式的语音文件,这里先通过ffmpeg将mp3文件转换为wav:

ffmpeg -i ./test1.mp3 -ar 16000 -ac 1 -c:a pcm_s16le ./test1.wav

程序返回:

ffmpeg version 5.1.2 Copyright (c) 2000-2022 the FFmpeg developers  built with Apple clang version 14.0.0 (clang-1400.0.29.202)  configuration: --prefix=/opt/homebrew/Cellar/ffmpeg/5.1.2_1 --enable-shared --enable-pthreads --enable-version3 --cc=clang --host-cflags= --host-ldflags= --enable-ffplay --enable-gnutls --enable-gpl --enable-libaom --enable-libbluray --enable-libdav1d --enable-libmp3lame --enable-libopus --enable-librav1e --enable-librist --enable-librubberband --enable-libsnappy --enable-libsrt --enable-libtesseract --enable-libtheora --enable-libvidstab --enable-libvmaf --enable-libvorbis --enable-libvpx --enable-libwebp --enable-libx264 --enable-libx265 --enable-libxml2 --enable-libxvid --enable-lzma --enable-libfontconfig --enable-libfreetype --enable-frei0r --enable-libass --enable-libopencore-amrnb --enable-libopencore-amrwb --enable-libopenjpeg --enable-libspeex --enable-libsoxr --enable-libzmq --enable-libzimg --disable-libjack --disable-indev=jack --enable-videotoolbox --enable-neon  libavutil      57. 28.100 / 57. 28.100  libavcodec     59. 37.100 / 59. 37.100  libavformat    59. 27.100 / 59. 27.100  libavdevice    59.  7.100 / 59.  7.100  libavfilter     8. 44.100 /  8. 44.100  libswscale      6.  7.100 /  6.  7.100  libswresample   4.  7.100 /  4.  7.100  libpostproc    56.  6.100 / 56.  6.100  
[mp3 @ 0x130e05580] Estimating duration from bitrate, this may be inaccurate  
Input #0, mp3, from './test1.mp3':  Duration: 00:05:41.33, start: 0.000000, bitrate: 48 kb/s  Stream #0:0: Audio: mp3, 24000 Hz, mono, fltp, 48 kb/s  
Stream mapping:  Stream #0:0 -> #0:0 (mp3 (mp3float) -> pcm_s16le (native))  
Press [q] to stop, [?] for help  
Output #0, wav, to './test1.wav':  Metadata:  ISFT            : Lavf59.27.100  Stream #0:0: Audio: pcm_s16le ([1][0][0][0] / 0x0001), 16000 Hz, mono, s16, 256 kb/s  Metadata:  encoder         : Lavc59.37.100 pcm_s16le  
[mp3float @ 0x132004260] overread, skip -6 enddists: -4 -4ed=N/A      Last message repeated 1 times  
[mp3float @ 0x132004260] overread, skip -7 enddists: -1 -1  
[mp3float @ 0x132004260] overread, skip -7 enddists: -2 -2  
[mp3float @ 0x132004260] overread, skip -7 enddists: -1 -1  
[mp3float @ 0x132004260] overread, skip -9 enddists: -2 -2  
[mp3float @ 0x132004260] overread, skip -5 enddists: -1 -1  Last message repeated 1 times  
[mp3float @ 0x132004260] overread, skip -7 enddists: -3 -3  
[mp3float @ 0x132004260] overread, skip -8 enddists: -5 -5  
[mp3float @ 0x132004260] overread, skip -5 enddists: -2 -2  
[mp3float @ 0x132004260] overread, skip -6 enddists: -1 -1  
[mp3float @ 0x132004260] overread, skip -7 enddists: -3 -3  
[mp3float @ 0x132004260] overread, skip -6 enddists: -2 -2  
[mp3float @ 0x132004260] overread, skip -6 enddists: -3 -3  
[mp3float @ 0x132004260] overread, skip -7 enddists: -6 -6  
[mp3float @ 0x132004260] overread, skip -9 enddists: -6 -6  
[mp3float @ 0x132004260] overread, skip -5 enddists: -3 -3  
[mp3float @ 0x132004260] overread, skip -5 enddists: -2 -2  
[mp3float @ 0x132004260] overread, skip -5 enddists: -3 -3  
[mp3float @ 0x132004260] overread, skip -7 enddists: -1 -1  
size=   10667kB time=00:05:41.32 bitrate= 256.0kbits/s speed=2.08e+03x      
video:0kB audio:10666kB subtitle:0kB other streams:0kB global headers:0kB muxing overhead: 0.000714%

这里将一段五分四十一秒的语音转换为wav文件。

随后运行命令开始转录:

./main -osrt -m ./models/ggml-medium.bin -f samples/test1.wav -l zh

这里需要加上参数-l,告知程序为中文语音,程序返回:

➜  whisper.cpp git:(master) ./main -osrt -m ./models/ggml-medium.bin -f samples/test1.wav -l zh  
whisper_init_from_file_no_state: loading model from './models/ggml-medium.bin'  
whisper_model_load: loading model  
whisper_model_load: n_vocab       = 51865  
whisper_model_load: n_audio_ctx   = 1500  
whisper_model_load: n_audio_state = 1024  
whisper_model_load: n_audio_head  = 16  
whisper_model_load: n_audio_layer = 24  
whisper_model_load: n_text_ctx    = 448  
whisper_model_load: n_text_state  = 1024  
whisper_model_load: n_text_head   = 16  
whisper_model_load: n_text_layer  = 24  
whisper_model_load: n_mels        = 80  
whisper_model_load: f16           = 1  
whisper_model_load: type          = 4  
whisper_model_load: mem required  = 1725.00 MB (+   43.00 MB per decoder)  
whisper_model_load: adding 1608 extra tokens  
whisper_model_load: model ctx     = 1462.35 MB  
whisper_model_load: model size    = 1462.12 MB  
whisper_init_state: kv self size  =   42.00 MB  
whisper_init_state: kv cross size =  140.62 MB  system_info: n_threads = 4 / 10 | AVX = 0 | AVX2 = 0 | AVX512 = 0 | FMA = 0 | NEON = 1 | ARM_FMA = 1 | F16C = 0 | FP16_VA = 1 | WASM_SIMD = 0 | BLAS = 1 | SSE3 = 0 | VSX = 0 | COREML = 0 |   main: processing 'samples/test1.wav' (5461248 samples, 341.3 sec), 4 threads, 1 processors, lang = zh, task = transcribe, timestamps = 1 ...  [00:00:00.000 --> 00:00:03.340]  Hello 大家好,这里是刘越的技术博客。  
[00:00:03.340 --> 00:00:05.720]  最近的事情大家都晓得了,  
[00:00:05.720 --> 00:00:07.880]  某公司技术经理魅上欺下,  
[00:00:07.880 --> 00:00:10.380]  打工人应对进队,不易快灾,  
[00:00:10.380 --> 00:00:12.020]  不易壮灾,  
[00:00:12.020 --> 00:00:14.280]  所谓魅上者必欺下,  
[00:00:14.280 --> 00:00:16.020]  古人诚不我窃。  
[00:00:16.020 --> 00:00:17.360]  技术经理者,  
[00:00:17.360 --> 00:00:20.160]  公然在聊天群里大玩职场PUA,  
[00:00:20.160 --> 00:00:22.400]  气焰嚣张,有恃无恐,  
[00:00:22.400 --> 00:00:23.700]  最终引发众目,  
[00:00:23.700 --> 00:00:26.500]  嘿嘿,技术经理,团队领导,  
[00:00:26.500 --> 00:00:29.300]  原来团队领导这四个字是这么用的,  
[00:00:29.300 --> 00:00:31.540]  奴媚显达,构陷下属,  
[00:00:31.540 --> 00:00:32.780]  人文巨损,  
[00:00:32.780 --> 00:00:33.840]  逢迎上意,  
[00:00:33.840 --> 00:00:34.980]  傲然下欺,  
[00:00:34.980 --> 00:00:36.080]  装腔作势,  
[00:00:36.080 --> 00:00:37.180]  极尽投机,  
[00:00:37.180 --> 00:00:38.320]  负他人之负,  
[00:00:38.320 --> 00:00:39.620]  康他人之愷,  
[00:00:39.620 --> 00:00:42.180]  如此者,可谓团队领导也。  
[00:00:42.180 --> 00:00:43.980]  中国的所谓传统文化,  
[00:00:43.980 --> 00:00:45.320]  除了仁义理智性,  
[00:00:45.320 --> 00:00:46.620]  除了金石子极,  
[00:00:46.620 --> 00:00:47.820]  除了争争风骨,  
[00:00:47.820 --> 00:00:49.560]  其实还有很多别的东西,  
[00:00:49.560 --> 00:00:52.020]  被大家或有意或无意的忽视了,  
[00:00:52.020 --> 00:00:53.300]  比如功利实用,  
[00:00:53.300 --> 00:00:54.300]  屈颜附示,  
[00:00:54.300 --> 00:00:55.360]  以兼至善,  
[00:00:55.360 --> 00:01:01.000]  官本位和钱规则的传统,在某种程度上,传统文化这没硬币的另一面,  
[00:01:01.000 --> 00:01:03.900]  才是更需要我们去面对和正视的,  
[00:01:03.900 --> 00:01:07.140]  我以为,这在目前盛行实惠价值观的时候,  
[00:01:07.140 --> 00:01:08.940]  提一提还是必要的,  
[00:01:08.940 --> 00:01:10.240]  有的人说了,  
[00:01:10.240 --> 00:01:13.740]  在开发群里对领导,非常痛快,非常爽,  
[00:01:13.740 --> 00:01:17.180]  但是,然后呢,有用吗?  
[00:01:17.180 --> 00:01:19.260]  倒霉的还不是自己,  
[00:01:19.260 --> 00:01:22.520]  没错,这就是功利且实用的传统,  
[00:01:22.520 --> 00:01:28.780]  各种精神,思辨,反抗,愤怒,都抵不过三个字,有用吗?  
[00:01:28.780 --> 00:01:31.820]  事实上,但凡叫做某种精神的,  
[00:01:31.820 --> 00:01:33.320]  那就是哲学思辨,  
[00:01:33.320 --> 00:01:36.220]  就是一种相对无用的思辨和学术,  
[00:01:36.220 --> 00:01:39.180]  而中国职场有很强的实用传统,  
[00:01:39.180 --> 00:01:42.140]  但这不是学术思辨,也没有理论构架,  
[00:01:42.140 --> 00:01:44.380]  仅仅是一种短视的经验论,  
[00:01:44.380 --> 00:01:47.220]  所以,功利主义,是密尔,  
[00:01:47.220 --> 00:01:48.980]  编庆的伦理价值学说,  
[00:01:48.980 --> 00:01:52.700]  强调的是,追求幸福,如何获得最大效用,  
[00:01:52.700 --> 00:01:55.580]  实用主义,是西方的一个学术流派,  
[00:01:55.580 --> 00:01:58.260]  比如杜威,胡适,就是代表,  
[00:01:58.260 --> 00:02:01.180]  实用主义的另一个名字,叫人本主义,  
[00:02:01.180 --> 00:02:04.780]  意思是,以人作为经验和万物的尺度,  
[00:02:04.780 --> 00:02:06.080]  换句话说,  
[00:02:06.080 --> 00:02:09.420]  功利主义,反对的正是那种短视的功利,  
[00:02:09.420 --> 00:02:13.220]  实用主义,反对的也正是那种凡是看对自己,  
[00:02:13.220 --> 00:02:15.220]  是不是有利的局限判断,  
[00:02:15.220 --> 00:02:17.260]  而在中国职场功利,  
[00:02:17.260 --> 00:02:21.060]  实用的传统中,恰恰是不会有这些理论构架的,  
[00:02:21.060 --> 00:02:23.700]  并且,不仅没有理论构架,  
[00:02:23.700 --> 00:02:26.140]  还要对那些无用的,思辨的,  
[00:02:26.140 --> 00:02:29.980]  纯粹的精神,视如避喜,吃之以鼻,  
[00:02:29.980 --> 00:02:32.260]  没错,在技术团队里,  
[00:02:32.260 --> 00:02:35.260]  我们重视技术,重视实用的科学,  
[00:02:35.260 --> 00:02:38.900]  但是主流职场并不鼓励去搞那些看似无用的东西,  
[00:02:38.900 --> 00:02:41.380]  比如普通劳动者的合法权益,  
[00:02:41.380 --> 00:02:43.580]  张义谋的满江红,  
[00:02:43.580 --> 00:02:45.220]  大家想必也都看了的,  
[00:02:45.220 --> 00:02:46.820]  人们总觉得很奇怪,  
[00:02:46.820 --> 00:02:48.300]  为什么那么坏的人,  
[00:02:48.300 --> 00:02:50.020]  皇帝为啥不罢免他?  
[00:02:50.020 --> 00:02:53.140]  为什么小人能当权来构陷好人呢?  
[00:02:53.140 --> 00:02:55.980]  当我们了解了传统文化中的法家思想,  
[00:02:55.980 --> 00:02:57.300]  就了然了,  
[00:02:57.300 --> 00:02:59.260]  在法家的思想规则下,  
[00:02:59.260 --> 00:03:01.660]  小人得是,忠良备辱,  
[00:03:01.660 --> 00:03:03.140]  事事所必然,  
[00:03:03.140 --> 00:03:04.900]  因为他一开始的设定,  
[00:03:04.900 --> 00:03:07.540]  就使得劣币驱逐良币的游戏规则,  
[00:03:07.540 --> 00:03:09.940]  所以,在这种观念下,  
[00:03:09.940 --> 00:03:12.460]  古代常见的一种职场智慧就是,  
[00:03:12.460 --> 00:03:14.820]  自污名节,以求自保,  
[00:03:14.820 --> 00:03:16.420]  在这种环境下,  
[00:03:16.420 --> 00:03:17.780]  要想生存,  
[00:03:17.780 --> 00:03:19.260]  就只有一条出路,  
[00:03:19.260 --> 00:03:20.900]  那就是依附权力,  
[00:03:20.900 --> 00:03:23.700]  并且,谁能拥有更大的权力,  
[00:03:23.700 --> 00:03:25.700]  谁就能生存得更好,  
[00:03:25.700 --> 00:03:27.500]  如何依附权力呢?  
[00:03:27.500 --> 00:03:29.180]  那就是现在正在发生的,  
[00:03:29.180 --> 00:03:31.900]  肆无忌惮的大腕职场PUA,  
[00:03:31.900 --> 00:03:33.060]  除此之外,  
[00:03:33.060 --> 00:03:34.340]  这种权力关系,  
[00:03:34.340 --> 00:03:36.900]  在古代会渗透到方方面面,  
[00:03:36.900 --> 00:03:40.300]  因为权力系统是一个复杂而高效的运行机器,  
[00:03:40.300 --> 00:03:42.940]  CPU,内存,硬盘,  
[00:03:42.940 --> 00:03:44.900]  甚至一颗C面底螺丝钉,  
[00:03:44.900 --> 00:03:47.140]  都是权力机器上的一个环节,  
[00:03:47.140 --> 00:03:48.060]  于是,  
[00:03:48.060 --> 00:03:50.420]  官僚体系之外的一切职场人,  
[00:03:50.420 --> 00:03:52.340]  都会面临一个尴尬的处境,  
[00:03:52.340 --> 00:03:54.340]  一方面遭遇权力的打压,  
[00:03:54.340 --> 00:03:55.340]  另一方面,  
[00:03:55.340 --> 00:03:57.900]  也都会多少尝到权力的甜头,  
[00:03:57.900 --> 00:03:58.900]  于是乎,  
[00:03:58.900 --> 00:04:01.420]  权力的细胞渗透到角角落落,  
[00:04:01.420 --> 00:04:02.980]  即便没有组织权力,  
[00:04:02.980 --> 00:04:04.620]  也要追求文化权力,  
[00:04:04.620 --> 00:04:05.500]  父权,  
[00:04:05.500 --> 00:04:06.380]  夫权,  
[00:04:06.380 --> 00:04:07.460]  家长权力,  
[00:04:07.460 --> 00:04:08.580]  宗族权力,  
[00:04:08.580 --> 00:04:09.660]  老师权力,  
[00:04:09.660 --> 00:04:10.780]  公司权力,  
[00:04:10.780 --> 00:04:12.140]  团队领导权力,  
[00:04:12.140 --> 00:04:13.100]  点点滴滴,  
[00:04:13.100 --> 00:04:15.580]  滴滴点点,追逐权力,  
[00:04:15.580 --> 00:04:18.140]  几乎成为人们生活的全部意义,  
[00:04:18.140 --> 00:04:18.980]  故而,  
[00:04:18.980 --> 00:04:19.980]  服从权力,  
[00:04:19.980 --> 00:04:21.180]  服从上级,  
[00:04:21.180 --> 00:04:22.420]  不得罪同事,  
[00:04:22.420 --> 00:04:23.660]  不得罪朋友,  
[00:04:23.660 --> 00:04:25.060]  不得罪陌生人,  
[00:04:25.060 --> 00:04:26.100]  因为你不知道,  
[00:04:26.100 --> 00:04:28.260]  他们背后有什么的权力关系,  
[00:04:28.260 --> 00:04:30.940]  他们又会不会用这个权力来对付你,  
[00:04:30.940 --> 00:04:31.940]  没错,  
[00:04:31.940 --> 00:04:34.380]  当我们解构群里那位领导的行为时,  
[00:04:34.380 --> 00:04:36.220]  我们也在解构我们自己,  
[00:04:36.220 --> 00:04:37.420]  毫无疑问,  
[00:04:37.420 --> 00:04:39.380]  对于这位敢于发声的职场人,  
[00:04:39.380 --> 00:04:41.180]  深安职场底层逻辑的,  
[00:04:41.180 --> 00:04:43.220]  我们一定能猜到他的结局,  
[00:04:43.220 --> 00:04:44.700]  他的结局是注定的,  
[00:04:44.700 --> 00:04:46.220]  同时也是悲哀的,  
[00:04:46.220 --> 00:04:47.340]  问题是,  
[00:04:47.340 --> 00:04:48.540]  这样做,  
[00:04:48.540 --> 00:04:49.660]  值得吗?  
[00:04:49.660 --> 00:04:52.580]  香港著名导演王家卫拍过一部电影,  
[00:04:52.580 --> 00:04:54.420]  叫做东邪西毒,  
[00:04:54.420 --> 00:04:56.340]  电影中有这样一个情节,  
[00:04:56.340 --> 00:04:59.620]  有个女人的弟弟被太尉府的一群刀客杀了,  
[00:04:59.620 --> 00:05:00.860]  他想报仇,  
[00:05:00.860 --> 00:05:02.300]  可自己没有武功,  
[00:05:02.300 --> 00:05:04.060]  只能请刀客出手,  
[00:05:04.060 --> 00:05:05.540]  但家里穷没钱,  
[00:05:05.540 --> 00:05:08.540]  最有价值的资产是一篮子鸡蛋,  
[00:05:08.540 --> 00:05:09.260]  于是,  
[00:05:09.260 --> 00:05:10.900]  他提着那一篮子鸡蛋,  
[00:05:10.900 --> 00:05:13.420]  天天站在刀客剑客们经过的路口,  
[00:05:13.420 --> 00:05:14.700]  请求他们出手,  
[00:05:14.700 --> 00:05:16.220]  报仇就是鸡蛋,  
[00:05:16.220 --> 00:05:17.860]  没有人愿意为了鸡蛋,  
[00:05:17.860 --> 00:05:20.020]  去单挑太尉府的刀客,  
[00:05:20.020 --> 00:05:21.460]  除了洪七,  
[00:05:21.460 --> 00:05:24.260]  洪七独自力战太尉府那帮刀客,  
[00:05:24.260 --> 00:05:26.780]  所得的报仇是一个鸡蛋,  
[00:05:26.780 --> 00:05:29.020]  但是洪七付出的代价太大,  
[00:05:29.020 --> 00:05:30.060]  混战中,  
[00:05:30.060 --> 00:05:32.700]  洪七被对手砍断了一根手指,  
[00:05:32.700 --> 00:05:33.820]  为了一个鸡蛋,  
[00:05:33.820 --> 00:05:35.500]  而失去一只手指,  
[00:05:35.500 --> 00:05:36.740]  值得吗?  
[00:05:36.740 --> 00:05:37.860]  不值得,  
[00:05:37.860 --> 00:05:39.300]  但是我觉得痛快,  
[00:05:39.300 --> 00:05:40.540]  因為這才是我自己  output_srt: saving output to 'samples/test1.wav.srt'  whisper_print_timings:     load time =   978.82 ms  
whisper_print_timings:     fallbacks =   0 p /   0 h  
whisper_print_timings:      mel time =   438.81 ms  
whisper_print_timings:   sample time =   980.66 ms /  2343 runs (    0.42 ms per run)  
whisper_print_timings:   encode time = 31476.10 ms /    13 runs ( 2421.24 ms per run)  
whisper_print_timings:   decode time = 47833.70 ms /  2343 runs (   20.42 ms per run)  
whisper_print_timings:    total time = 81797.88 ms

五分钟的语音,只需要一分钟多一点就可以转录完成,效率满分。

当然,精确度还有待提高,提高精确度可以选择large模型,但转录时间会相应增加。

苹果M芯片模型转换

基于苹果Mac系统的用户有福了,Whisper.cpp可以通过Core ML在Apple Neural Engine (ANE)上执行编码器推理,这可以比仅使用CPU执行快出三倍以上。

首先安装转换依赖:

pip install ane_transformers  
pip install openai-whisper  
pip install coremltools

接着运行转换脚本:

./models/generate-coreml-model.sh medium 

这里参数即模型的名称。

程序返回:

➜  models git:(master) python3 convert-whisper-to-coreml.py --model medium --encoder-only True   
scikit-learn version 1.2.0 is not supported. Minimum required version: 0.17. Maximum required version: 1.1.2. Disabling scikit-learn conversion API.  
ModelDimensions(n_mels=80, n_audio_ctx=1500, n_audio_state=1024, n_audio_head=16, n_audio_layer=24, n_vocab=51865, n_text_ctx=448, n_text_state=1024, n_text_head=16, n_text_layer=24)  
/opt/homebrew/lib/python3.10/site-packages/whisper/model.py:166: TracerWarning: Converting a tensor to a Python boolean might cause the trace to be incorrect. We can't record the data flow of Python values, so this value will be treated as a constant in the future. This means that the trace might not generalize to other inputs!  assert x.shape[1:] == self.positional_embedding.shape, "incorrect audio shape"  
/opt/homebrew/lib/python3.10/site-packages/whisper/model.py:97: UserWarning: __floordiv__ is deprecated, and its behavior will change in a future version of pytorch. It currently rounds toward 0 (like the 'trunc' function NOT 'floor'). This results in incorrect rounding for negative values. To keep the current behavior, use torch.div(a, b, rounding_mode='trunc'), or for actual floor division, use torch.div(a, b, rounding_mode='floor').  scale = (n_state // self.n_head) ** -0.25  
Converting PyTorch Frontend ==> MIL Ops: 100%|▉| 1971/1972 [00:00<00:00, 3247.25  
Running MIL frontend_pytorch pipeline: 100%|█| 5/5 [00:00<00:00, 54.69 passes/s]  
Running MIL default pipeline: 100%|████████| 57/57 [00:09<00:00,  6.29 passes/s]  
Running MIL backend_mlprogram pipeline: 100%|█| 10/10 [00:00<00:00, 444.13 passe  done converting

转换好以后,重新进行编译:

make clean  
WHISPER_COREML=1 make -j

随后用转换后的模型进行转录即可:

./main -m models/ggml-medium.bin -f samples/jfk.wav

至此,Mac用户立马荣升一等公民。

结语

Whisper.cpp是Whisper的精神复刻与肉体重生,完美承袭了Whisper的所有功能,在此之上,提高了语音转录文字的速度和效率以及跨平台移植性,百尺竿头更进一步,开源技术的高速发展让我们明白了一件事,那就是高品质技术的传播远比技术本身更加宝贵。


http://www.ppmy.cn/news/61481.html

相关文章

城市轨道交通自动售检票系统

概述 城市轨道交通自动售检票系统&#xff08;AFC&#xff09;是基于计算机、通信、网络、自动控制等技术&#xff0c;实现轨道交通售票、检票、计费、收费、统计、清分、管理等全过程的自动化系统。可以提高轨道交通的运营效率&#xff0c;满足乘客的快速出行需求&#xff0c…

Illustrator如何使用符号与图表之实例演示?

文章目录 0.引言1.使用Microsoft Excel数据创建图表2.修改图表图形及文字 0.引言 因科研等多场景需要进行绘图处理&#xff0c;笔者对Illustrator进行了学习&#xff0c;本文通过《Illustrator CC2018基础与实战》及其配套素材结合网上相关资料进行学习笔记总结&#xff0c;本文…

freetype用法

freetype用法 文章目录 freetype用法0.实现1.变量定义2.lcd操作获取屏幕信息3.freetype初始化4.绘画 1.字形度量2.类1.FT 中的面向对象2.FT_Library 类3.FT_Face 类4 FT_Size 类5 FT_GlyphSlot 类 3.函数1.把一个字符码转换为一个字形索引FT_Get_Char_Index函数2.从 face 中装…

Jetpack Compose 中的Deep Linking — Android

Jetpack Compose 中的Deep Linking — Android 在本文中&#xff0c;我们将学习如何在 Jetpack Compose 中轻松实现深度链接。 什么是深度链接&#xff1f; 深层链接允许用户直接从外部来源&#xff08;例如网站或其他应用程序&#xff09;导航到应用程序内的特定内容。 添…

Noah-MP陆面过程模型建模方法与站点、区域模拟实践技术

查看原文&#xff1a;Noah-MP陆面过程模型建模方法与站点、区域模拟实践技术 目标&#xff1a; 了解陆表过程的主要研究内容以及陆面模型在生态水文研究中的地位和作用&#xff1b;熟悉模型的发展历程&#xff0c;常见模型及各自特点&#xff1b;理解Noah-MP模型的原理&#…

将页面元素隐藏的10种方法

在Web开发中&#xff0c;隐藏页面元素使其视觉不可见是一个非常常见的需求。为了实现这一目标&#xff0c;我们通常会采用多种方法&#xff0c;最常用的例如CSS的display属性&#xff0c;只要设置为node即可隐藏元素。 本文将通过对当前所有可用的隐藏元素的方法做一个总结&…

linux部署k8s

linux部署k8s 0、k8s的前世今生1、下载k8s2、k8s文档2.1、容器化部署的优越性2.1.1、Traditional deployment era2.1.2、Virtualized deployment era2.1.3、Container deployment era 3、安装k8s3.1、Install kubectl on Linux3.2、 0、k8s的前世今生 参考链接: https://kuber…

ETO、MTO、ATO与MTS(按单设计、按单生产、按单装配和库存生产)

按照企业组织生产的特点&#xff0c;可以把制造企业划分为ETO、ATO、MTO与MTS&#xff08;按单设计、按单装配、按单生产和库存生产&#xff09;四种生产类型。 按单设计&#xff08;Engineer To Order&#xff0c;ETO&#xff09;   在这种生产类型下&#xff0c;一种产品在…