A python api for BirdNET-Lite and BirdNET-Analyzer
Project description
birdnetlib
A python api for BirdNET-Lite and BirdNET-Analyzer
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-Lite and BirdNET-Analyzer.
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}]
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)
Utility classes
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
uses BirdNET-Analyzer to generate possible species lists from location and date.
species = SpeciesList()
species_list = species.return_list_for_analyzer(
lon=-120.7463, lat=35.4244, date=datetime(year=2022, month=5, day=10)
)
print(species_list) # ['Haemorhous mexicanus_House Finch', 'Aphelocoma californica_California Scrub-Jay', ...]
Additional utility class examples
- Watch a directory and analyze with multiple analyzer models as files are saved
- Watch a directory and apply datetimes by parsing file names (eg 2022-08-15-birdnet-21:05:52.wav) prior to analyzing This example can also be used to modify lat/lon, min_conf, etc., based on file name prior to analyzing.
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:
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.
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
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Hashes for birdnetlib-0.0.13-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 281e3f3bab975cebdc15be472b1502eae54f189e627f77f55a1b560dd04dcca4 |
|
MD5 | 20f2b9795eaf1bb1b54834abbc9d3142 |
|
BLAKE2b-256 | 3c98338ca134becfb50241aa63493979e482719455cc6c327fabb6d8acc1bf51 |