π¨ Looking for a simple way to run MegaDetector v5 without code? Check out the CamTrap Detector project! π¨
CamTrapML is a Python library for Detecting, Classifying, and Analysing Wildlife Camera Trap Imagery.
$ pip install camtrapml
Search for images in a directory, load an image and create a thumbnail.
%load_ext autoreload
%autoreload
from camtrapml.dataset import ImageDataset
from camtrapml.image.utils import load_image, thumbnail
imageset = ImageDataset(
name="Test Images",
path="test/fixtures/images",
)
image_paths = list(imageset.enumerate_images())
thumbnail(load_image(image_paths[0]))
EXIF extraction is a common task in gathering the metadata such as each image's timestamp, camera model, focal length, etc. Some researchers write labelling into the EXIF data. CamTrapML doesn't assist with writing to EXIF. However, there is functionality for extracting it for analysis and building datasets for training new models from previously labelled images.
ExifTool is required for this package to work. Installation instructions can be found here.
Three methods are available for extracting EXIF data from images. Each with different performance characteristics.
Method 1: Individual Images
from camtrapml.image.exif import extract_exif
exif = extract_exif(image_paths[0])
exif
Method 2: Multiple Images
extract_multiple_exif
passes a list of image paths to ExifTool and returns a list of dictionaries containing the EXIF data. This is faster than extract_exif
when multiple images are being processed as it only passes the list of image paths to ExifTool once, rather than spawning a new process for each image.
from camtrapml.image.exif import extract_multiple_exif
exif = extract_multiple_exif(image_paths)
exif[0]
Method 3: Multiple Images, Multiple Processes
When processing large datasets, it's apparent that the bottleneck in extracting the EXIF information tends to be the CPU. This method spawns multiple versions of ExifTool in parallel, each with a batch of image paths. This is faster than extract_multiple_exif
when processing large datasets as it allows for multiple processes to be spawned and the data extracted in parallel.
from camtrapml.image.exif import extract_multiple_exif_fast
exif = extract_multiple_exif_fast(image_paths)
exif[0]
Various Detection models are available in the camtrapml.detection
subpackage. These currently include MegaDetector (v4.1, v3 and v2) and support for loading in custom Tensorflow v1.x Object Detection Frozen models.
from camtrapml.detection.models.megadetector import MegaDetectorV4_1
from camtrapml.detection.utils import render_detections
with MegaDetectorV4_1() as detector:
detections = detector.detect(image_paths[0])
thumbnail(
render_detections(image_paths[0], detections, class_map=detector.class_map)
)
!cp ~/.camtrapml/models/megadetector/v4.1.0/md_v4.1.0.pb example-custom-model.pb
from camtrapml.detection.models.tensorflow import TF1ODAPIFrozenModel
from camtrapml.detection.utils import render_detections
from pathlib import Path
with TF1ODAPIFrozenModel(
model_path=Path("example-custom-model.pb").expanduser(),
class_map={
1: "animal",
},
) as detector:
detections = detector.detect(image_paths[1])
thumbnail(
render_detections(image_paths[1], detections, class_map=detector.class_map)
)
from camtrapml.detection.models.megadetector import MegaDetectorV4_1
from camtrapml.detection.utils import extract_detections_from_image
with MegaDetectorV4_1() as detector:
detections = detector.detect(image_paths[0])
list(extract_detections_from_image(load_image(image_paths[0]), detections))[0]
In order to reduce the risks of identification of humans in line with GDPR, CamTrapML provides the ability to remove humans from images. This is achieved by using the MegaDetector v3+ models to detect humans in the image, and then replacing all pixels in each human detection.
from camtrapml.detection.models.megadetector import MegaDetectorV4_1
from camtrapml.detection.utils import remove_detections_from_image
from camtrapml.image.utils import load_image, thumbnail
from pathlib import Path
ct_image_with_humans = Path("test/fixtures/human_images/IMG_0254.JPG").expanduser()
with MegaDetectorV4_1() as detector:
detections = detector.detect(ct_image_with_humans)
human_class_id = 2
thumbnail(
remove_detections_from_image(
load_image(ct_image_with_humans),
[
detection
for detection in detections
if detection["category"] == human_class_id and detection["conf"] > 0.5
],
)
)