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Saraswati - a robust, multi-channel audio recording, transmission and storage system

Project description

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Saraswati

About

Saraswati is a robust, multi-channel audio recording, transmission and storage system.

The software is based on GStreamer and the GStreamer Python Bindings, in turn using the fine PyGObject under the hood. It is designed to run on Single-board computer (SBC) systems as well as larger machines.

The system might become the designated work horse for flexible field recording of audio signals in environmental monitoring systems.

Saraswati is developed by an independent community of scientists from different domains working collaboratively on this project. You are welcome to join our efforts.

Etymology

Saraswati is the Hindu goddess of knowledge, music, art, wisdom and learning.

Status

The software was tested successfully with Python 3.7-3.9, GStreamer 1.10.4, 1.14.4, 1.16.2 and 1.18.4, on both Linux (Debian 10.x buster, Linux Mint 20.2) and macOS (Catalina 10.15.7).

THIS IS A WORK IN PROGRESS. THERE MIGHT BE DRAGONS. YOU HAVE BEEN WARNED.

Setup

This part of the documentation covers the installation of Saraswati. The first step to using any software package is getting it properly installed. Please read this section carefully.

Install prerequisites

As Saraswati is based on GStreamer and, optionally, ALSA, let’s install the relevant packages.

Debian-based systems
sudo apt-get update
sudo apt-get install --yes libgstreamer1.0 gstreamer1.0-tools gstreamer1.0-alsa gstreamer1.0-plugins-base gstreamer1.0-plugins-good
sudo apt-get install --yes python3 python3-pip python3-gst-1.0 python3-gi python3-tz
sudo apt-get install --yes alsa-utils mkvtoolnix flac
sudo pip3 install saraswati --upgrade
macOS systems
brew install gstreamer gst-python gst-libav gst-plugins-base gst-plugins-good
brew install mkvtoolnix flac

Configure system

Synchronize system time with NTP, this is important for appropriate timestamping:

sudo timedatectl set-ntp true

Install Saraswati

Install saraswati package from PyPI:

pip install saraswati

To quickly verify the installation, invoke:

saraswati record --channel="testdrive source=autoaudiosrc"

Usage

This part of the documentation covers how to run Saraswati. Please read this section carefully.

Recording audio

saraswati record is an implementation to

  • ingest audio from a GStreamer audio source element,

  • run it through flacenc to encode audio with the FLAC lossless audio encoder, and

  • finally store it using splitmuxsink, a GStreamer component which multiplexes incoming streams into multiple time- or size-limited files

Each audio fragment will be timestamped with the current date/time information in an ISO8601-like format, using a qualified UTC offset of +0000.

In order to learn about the command line syntax, please invoke saraswati --help or saraswati record --help.

Uploading audio

When the --upload= option is given, Saraswati will attempt to upload its spool directory to an rsync target. By default, it will do this each 5 minutes.

Please note rsync will be invoked using the --remove-source-files option. So, after successful upload, the spooled files on the local machine will get purged.

Example

Invoke:

saraswati record --channel="testdrive source=autoaudiosrc"

This will yield audio fragments in chunks worth of 5 minutes each:

recording_testdrive_20210621T155817+0000_0000.mka
recording_testdrive_20210621T160317+0000_0001.mka
recording_testdrive_20210621T160817+0000_0002.mka
recording_testdrive_20210621T161317+0000_0003.mka
recording_testdrive_20210621T161817+0000_0004.mka

Display segment metadata information embedded into the Matroska container file:

mkvinfo recording_testdrive_20210620T122642+0000_0065.mka | grep -E 'Codec|Date|duration'
| + Date: Sun Jun 20 12:26:42 2021 UTC
|  + Default duration: 00:00:00.104489796 (9.570 frames/fields per second for a video track)
|  + Codec ID: A_FLAC

Extract audio track:

mkvextract recording_testdrive_20210621T155817+0000_0000.mka tracks 0:audio_20210621T155817.flac
flac --decode audio_20210621T155817.flac

file recording_testdrive_20210621T155817+0000_0000.mka
Matroska data

file audio_20210621T155817.flac
FLAC audio bitstream data, 16 bit, mono, 48 kHz, length unknown

file audio_20210621T155817.wav
RIFF (little-endian) data, WAVE audio, Microsoft PCM, 16 bit, mono 48000 Hz

Project information

Background

This software gets developed for the “Bee Observer” (BOB) project, a joint endeavour initiated by the Cognitive neuroinformatics group at the University of Bremen and the people of the independent research and development project Hiveeyes. See also:

Details

The “Saraswati” program is released under the GNU AGPL license. Its source code lives on GitHub and the Python package is published to PyPI. You might also want to have a look at the documentation.

If you’d like to contribute you’re most welcome! Spend some time taking a look around, locate a bug, design issue or spelling mistake and then send us a pull request or create an issue.

Thanks in advance for your efforts, we really appreciate any help or feedback.

Code license

The code is licensed under the GNU AGPL license. See LICENSE file for details.


Have fun!

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saraswati-0.3.2.tar.gz (28.8 kB view hashes)

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