Skip to main content

A python api for BirdNET-Lite and BirdNET-Analyzer

Project description

birdnetlib

PyPI Test

A python api for BirdNET-Analyzer and BirdNET-Lite

Installation

birdnetlib requires Python 3.7+ and prior installation of Tensorflow Lite, librosa and ffmpeg. See BirdNET-Analyzer for more details on installing the Tensorflow-related dependencies.

pip install birdnetlib

Documentation

birdnetlib provides a common interface for BirdNET-Analyzer and BirdNET-Lite.

Using BirdNET-Analyzer

To use the newer BirdNET-Analyzer model, use the Analyzer class.

from birdnetlib import Recording
from birdnetlib.analyzer import Analyzer
from datetime import datetime

# Load and initialize the BirdNET-Analyzer models.
analyzer = Analyzer()

recording = Recording(
    analyzer,
    "sample.mp3",
    lat=35.4244,
    lon=-120.7463,
    date=datetime(year=2022, month=5, day=10), # use date or week_48
    min_conf=0.25,
)
recording.analyze()
print(recording.detections)

Using BirdNET-Lite

To use the BirdNET-Lite model, use the LiteAnalyzer class.

from birdnetlib import Recording
from birdnetlib.analyzer_lite import LiteAnalyzer
from datetime import datetime

# Load and initialize the BirdNET-Lite models.
analyzer = LiteAnalyzer()

recording = Recording(
    analyzer,
    "sample.mp3",
    lat=35.4244,
    lon=-120.7463,
    date=datetime(year=2022, month=5, day=10), # use date or week_48
    min_conf=0.25,
)
recording.analyze()
print(recording.detections) # Returns list of detections.

recording.detections contains a list of detected species, along with time ranges and confidence value.

[{'common_name': 'House Finch',
  'confidence': 0.5744,
  'end_time': 12.0,
  'scientific_name': 'Haemorhous mexicanus',
  'start_time': 9.0},
 {'common_name': 'House Finch',
  'confidence': 0.4496,
  'end_time': 15.0,
  'scientific_name': 'Haemorhous mexicanus',
  'start_time': 12.0}]

Utility classes

DirectoryAnalyzer

DirectoryAnalyzer can process a directory and analyze contained files.

def on_analyze_complete(recording):
    print(recording.path)
    pprint(recording.detections)

directory = DirectoryAnalyzer(
    "/Birds/mp3_dir",
    patterns=["*.mp3", "*.wav"]
)
directory.on_analyze_complete = on_analyze_complete
directory.process()

See the full example for analyzer options and error handling callbacks.

DirectoryWatcher

DirectoryWatcher can watch a directory and analyze new files as they are created.

def on_analyze_complete(recording):
    print(recording.path)
    pprint(recording.detections)

watcher = DirectoryWatcher("/Birds/mp3_dir")
watcher.on_analyze_complete = on_analyze_complete
watcher.watch()

See the full example for analyzer options and error handling callbacks.

SpeciesList

SpeciesList uses BirdNET-Analyzer to predict species lists from location and date.

species = SpeciesList()
species_list = species.return_list(
    lon=-120.7463, lat=35.4244, date=datetime(year=2022, month=5, day=10)
)
print(species_list)
# [{'scientific_name': 'Haemorhous mexicanus', 'common_name': 'House Finch', 'threshold': 0.8916686}, ...]

Additional examples

About BirdNET-Lite and BirdNET-Analyzer

birdnetlib uses models provided by BirdNET-Lite and BirdNET-Analyzer under the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International Public License.

BirdNET-Lite and BirdNET-Analyzer were developed by the K. Lisa Yang Center for Conservation Bioacoustics at the Cornell Lab of Ornithology.

For more information on BirdNET analyzers, please see the project repositories below:

BirdNET-Analyzer

BirdNET-Lite

birdnetlib is not associated with BirdNET-Lite, BirdNET-Analyzer or the K. Lisa Yang Center for Conservation Bioacoustics.

About birdnetlib

birdnetlib is maintained by Joe Weiss. Contributions are welcome.

Project Goals

  • Establish a unified API for interacting with Tensorflow-based BirdNET analyzers
  • Enable python-based test cases for BirdNET analyzers
  • Make it easier to use BirdNET in python-based projects
  • Make it easier to migrate to new BirdNET versions/models as they become available

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

birdnetlib-0.4.1.tar.gz (91.5 MB view hashes)

Uploaded Source

Built Distribution

birdnetlib-0.4.1-py3-none-any.whl (91.5 MB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page