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How to inspect detection features in Python
Use this guide when you want the per-detection feature vectors exposed by the current API.
Get the feature vector for one detection
Each detection carries a features vector.
The API exposes it through get_detection_features.
from pathlib import Path
from batdetect2.api_v2 import BatDetect2API
api = BatDetect2API.from_checkpoint(Path("path/to/model.ckpt"))
prediction = api.process_file(Path("path/to/audio.wav"))
for detection in prediction.detections:
features = api.get_detection_features(detection)
print(features.shape)
Use features for exploration, not as ground truth labels
These features are internal model representations attached to detections.
They can be useful for:
- exploratory visualization,
- downstream clustering,
- comparison across detections,
- building extra analysis pipelines.
They do not replace validation.
They also do not automatically have a one-to-one interpretation as ecological variables.
Save predictions with features included
If you need features on disk, use an output format that supports them, such as raw or parquet, and keep feature inclusion enabled.
See {doc}save-predictions-in-different-output-formats.
Related pages
- Understanding features and embeddings: {doc}
../explanation/extracted-features-and-embeddings - Output formats reference: {doc}
../reference/output-formats - API reference: {doc}
../reference/api