CrossroadsEffects Save

At the crossroads of programming your own audio effects, and letting your audio effects be programmed for you.

Project README

Crossroads Effects

Build Status

This repository contains a system (still in developement) for auto-generating audio effects for a given input and output audio file. More technically, the system uses a Python script to generate Faust code that compiles to create audio effects. The Faust code is then optimized to create an effect that best approximates the desired output, using a variety of optimization schemes as well as genetic algorithms.

Using

This project is still in the early stages of development. To test that the system is working on your machine, run run_tests.sh --quick.

Dependencies

To use Crossroads, you must have the following dependencies installed:

  • Python
  • Python packages (pip install -r requirements.txt)
  • Faust
  • Mac/Linux only
    • Boost (sudo apt-get install libboost-all-dev)
    • libsndfile (optional, see below)
  • Windows only

If you don't already have Faust installed, it is included in this repo and can be installed as follows (this requires CMAKE):

# Starting from the root directory of this repo
cd modules/Faust
make
sudo make install

Installation

# clone repo
git clone https://github.com/jatinchowdhury18/CrossroadsEffects.git
cd CrossroadsEffects

# initialize submodules
git submodule update --init --recursive

# If you don't already have Faust installed (requires cmake)
cd modules/Faust/
make
sudo make install
cd ../../

# Run tests (this will take a few minutes)
./run_tests.sh --quick

Running

To use Crossroads, you must have an input audio file, and a desired output audio file. Crossroads will attempt to generate an audio effect that can create the desired output from the given input. As an example, the audio_files/ directory contains a drum sample (drums.wav), and the same sample with a lower volume (gain.wav).

# Run `python crossroads.py --name=<EffectName> <input file> <desired output file>`
# (this could take several hours)
python crossroads.py --name=MyGain audio_files/drums.wav audio_files/gain.wav

Crossroads will generate a folder called MyGain that contains Faust code, VST plugins, and SVG block diagrams generated by Crossroads.

Using with libsndfile

Installing libsndfile is not strictly necessary, but can improve the speed of the algorithm by 2x or more. To install use sudo apt-get install libsndfile-dev (Linux), or brew install libsndfile (Mac).

If you don't want to use libsndfile, navigate to crossroads_scripts/param_estimation.py and set the flag USING_LIBSNDFILE=False on line 10.

How It Works

Crossroads uses a genetic algorithm to generate signal processing structures, made up of gain and delay elements. A gradient-based optimizer (L-BFGS-B) is then used to tune the parameters of each structure. Crossroads generates Faust code for each structure, then compiles a VST plugin, and runs the input audio through the plugin. The output audio is then compared to the desired audio using a combination of time-domain and frequency-domain error functions. Finally, the results of the error functions are fed back to the genetic algorithm which generates a new generation of structures.

For example, let's say we have an effect that we want to clone. Unbeknownst to us, the effect simply performs a 2-sample feed-forward comb filter. We can choose an input audio file, process it through the effect, then submit both audio files to Crossroads. Crossroads will then be able to evolve the cloned structure as follows:

Current Status and Future Work

Currently Crossroads is only configured to generate feedforward systems. The foundations exist to generate systems that contain feedback, but implementing the parameter estimation step for systems with complex poles is still in progress.

About the name

In German legend, a character named Faust makes a deal with the devil, to give up his soul for unlimited knowledge and all the pleasures he can imagine. In Blues legend, Robert Johnson makes a deal with the devil to become the greatest Blues guitarist of all time, in exchange for his soul. In audio programming, signal processing engineers are making a deal with the devil to give up creating their own DSP algorithms in exchange for machine learning algorithms that accomplish these signal processing tasks for them. In each instance, the deal with the devil takes place at a crossroads . . .

Contributing

Contributions are most welcome! In particular adding new base elements (see crossroads_scripts/gen_faust.py), or adding new evolutionary strategies (crossroads_scripts/evolve_structure.py). Feel free to contact us with any questions!

License

The code in this repository is licensed under the GNU Lesser General Public License. Note that any code generated by this system is not covered under this license, and can be licensed independently.

Open Source Agenda is not affiliated with "CrossroadsEffects" Project. README Source: jatinchowdhury18/CrossroadsEffects
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