-
Notifications
You must be signed in to change notification settings - Fork 900
Recurrent neural network for audio noise reduction
License
xiph/rnnoise
Folders and files
Name | Name | Last commit message | Last commit date | |
---|---|---|---|---|
Repository files navigation
RNNoise is a noise suppression library based on a recurrent neural network. A description of the algorithm is provided in the following paper: J.-M. Valin, A Hybrid DSP/Deep Learning Approach to Real-Time Full-Band Speech Enhancement, Proceedings of IEEE Multimedia Signal Processing (MMSP) Workshop, arXiv:1709.08243, 2018. https://arxiv.org/pdf/1709.08243.pdf An interactive demo of version 0.1 is available at: https://jmvalin.ca/demo/rnnoise/ To compile, just type: % ./autogen.sh % ./configure % make Optionally: % make install It is recommended to either set -march= in the CFLAGS to an architecture with AVX2 support or to add --enable-x86-rtcd to the configure script so that AVX2 (or SSE4.1) can at least be used as an option. Note that the autogen.sh script will automatically download the model files from the Xiph.Org servers, since those are too large to put in Git. While it is meant to be used as a library, a simple command-line tool is provided as an example. It operates on RAW 16-bit (machine endian) mono PCM files sampled at 48 kHz. It can be used as: % ./examples/rnnoise_demo <noisy speech> <output denoised> The output is also a 16-bit raw PCM file. NOTE AGAIN, THE INPUT and OUTPUT ARE IN RAW FORMAT, NOT WAV. The latest version of the source is available from https://gitlab.xiph.org/xiph/rnnoise . The GitHub repository is a convenience copy. == Training == The models distributed with RNNoise are now trained using only the publicly available datasets listed below and using the training precedure described here. Exact results will still depend on the the exact mix us data used, on how long the training is performed and on the various random seeds involved. To train an RNNoise model, you need both clean speech data, and noise data. Both need to be sampled at 48 kHz, in 16-bit PCM format (machine endian). Clean speech data can be obtained from the datasets listed in the datasets.txt file, or by downloaded the already-concatenation of those files in https://media.xiph.org/rnnoise/data/tts_speech_48k.sw For noise data, we suggest the background_noise.sw and foreground_noise.sw (or later versions) noise files from https://media.xiph.org/rnnoise/data/ The foreground_noise.sw file contains noise signals that are meant to be added to the background noise (e.g. keyboard sounds). Optionally, the foreground noise file can even be denoised with a traditional denoiser (e.g. libspeexdsp) to keep only the transient components. The first step is to take the speech and noise, and mix them in a variety of ways to simulate real life conditions (including pauses, filtering and more). Assuming the files are called speech.pcm and noise.pcm, start by generating the training feature data with: % ./dump_features speech.pcm background_noise.pcm foreground_noise.pcm features.f32 <count> where <count> is the number of sequences to process. The number of sequences should be at least 10000, but the more the better (200000 or more is recommended). Optionally, training can also simulate reverberation, in which case room impulse responses (RIR) are also needed. Limited RIR data is available at: https://media.xiph.org/rnnoise/data/measured_rirs-v2.tar.gz The format for those is raw 32-bit floating-point (files are little endian). Assuming a list of all the RIR files is contained in a rir_list.txt file, the training feature data can be generated with: % ./dump_features -rir_list rir_list.txt speech.pcm background_noise.pcm foreground_noise.pcm features.f32 <count> To make the feature generation faster, you can use the script provided in script/dump_features_parallel.sh (you will need to modify the script if you want to add RIR augmentation). To use it: % script/dump_features_parallel.sh ./dump_features speech.pcm background_noise.pcm foreground_noise.pcm features.f32 <count> rir_list.txt which will run nb_processes processes, each for count sequences, and concatenate the output to a single file. Once the feature file is computed, you can start the training with: % python3 train_rnnoise.py features.f32 output_directory Choose a number of epochs (using --epochs) that leads to about 75000 weight updates. The training will produce .pth files, e.g. rnnoise_50.pth . The next step is to convert the model to C files using: % python3 dump_rnnoise_weights.py --quantize rnnoise_50.pth rnnoise_c which will produce the rnnoise_data.c and rnnoise_data.h files in the rnnoise_c directory. Copy these files to src/ and then build RNNoise using the instructions above. For slightly better results, a trained model can be used to remove any noise from the "clean" training speech, before restaring the denoising process again (no need to do that more than once). == Loadable Models == The model format has changed since v0.1.1. Models now use a binary "machine endian" format. To output a model in that format, build RNNoise with that model and use the dump_weights_blob executable to output a weights_blob.bin binary file. That file can then be used with the rnnoise_model_from_file() API call. Note that the model object MUST NOT be deleted while the RNNoise state is active and the file MUST NOT be closed. To avoid including the default model in the build (e.g. to reduce download size) and rely only on model loading, add -DUSE_WEIGHTS_FILE to the CFLAGS. To be able to load different models, the model size (and header file) needs to patch the size use during build. Otherwise the model will not load We provide a "little" model with half as an alternative. To use the smaller model, rename rnnoise_data_little.c to rnnoise_data.c. It is possible to build both the regular and little binary weights and load any of them at run time since the little model has the same size as the regular one (except for the increased sparsity).
About
Recurrent neural network for audio noise reduction
Topics
Resources
License
Stars
Watchers
Forks
Packages 0
No packages published