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An ensemble of Neural Nets for Nudity Detection and Censoring

Project description

NudeNet: Neural Nets for Nudity Classification, Detection and selective censoring

DOI

Uncensored version of the following image can be found at https://i.imgur.com/rga6845.jpg (NSFW)

Classifier classes:

class name Description
safe Image/Video is not sexually explicit
unsafe Image/Video is sexually explicit

Default Detector classes:

class name Description
EXPOSED_ANUS Exposed Anus; Any gender
EXPOSED_ARMPITS Exposed Armpits; Any gender
COVERED_BELLY Provocative, but covered Belly; Any gender
EXPOSED_BELLY Exposed Belly; Any gender
COVERED_BUTTOCKS Provocative, but covered Buttocks; Any gender
EXPOSED_BUTTOCKS Exposed Buttocks; Any gender
FACE_F Female Face
FACE_M Male Face
COVERED_FEET Provocative, but covered Feet; Any gender
EXPOSED_FEET Exposed Feet; Any gender
COVERED_BREAST_F Provocative, but covered Breast; Female
EXPOSED_BREAST_F Exposed Breast; Female
COVERED_GENITALIA_F Provocative, but covered Genitalia; Female
EXPOSED_GENITALIA_F Exposed Genitalia; Female
EXPOSED_BREAST_M Exposed Breast; Male
EXPOSED_GENITALIA_M Exposed Genitalia; Male

Base Detector classes:

class name Description
EXPOSED_BELLY Exposed Belly; Any gender
EXPOSED_BUTTOCKS Exposed Buttocks; Any gender
EXPOSED_BREAST_F Exposed Breast; Female
EXPOSED_GENITALIA_F Exposed Genitalia; Female
EXPOSED_GENITALIA_M Exposed Genitalia; Male
EXPOSED_BREAST_M Exposed Breast; Male

As self-hostable API service

# Classifier
docker run -it -p8080:8080 notaitech/nudenet:classifier

# Detector
docker run -it -p8080:8080 notaitech/nudenet:detector

# See fastDeploy-file_client.py for running predictions via fastDeploy's REST endpoints 
wget https://raw.githubusercontent.com/notAI-tech/fastDeploy/master/cli/fastDeploy-file_client.py
# Single input
python fastDeploy-file_client.py --file PATH_TO_YOUR_IMAGE

# Client side batching
python fastDeploy-file_client.py --dir PATH_TO_FOLDER --ext jpg

As Python module

Installation:

# Tested with tensorflow/ tensorflow-gpu == 1.14
pip install --upgrade nudenet

Classifier Usage:

# Import module
from nudenet import NudeClassifier

# initialize classifier (downloads the checkpoint file automatically the first time)
classifier = NudeClassifier()

# Classify single image
classifier.classify('path_to_image_1')
# Returns {'path_to_image_1': {'safe': PROBABILITY, 'unsafe': PROBABILITY}}
# Classify multiple images (batch prediction)
# batch_size is optional; defaults to 4
classifier.classify(['path_to_image_1', 'path_to_image_2'], batch_size=BATCH_SIZE)
# Returns {'path_to_image_1': {'safe': PROBABILITY, 'unsafe': PROBABILITY},
#          'path_to_image_2': {'safe': PROBABILITY, 'unsafe': PROBABILITY}}

# Classify video
# batch_size is optional; defaults to 4
classifier.classify_video('path_to_video', batch_size=BATCH_SIZE)
# Returns {"metadata": {"fps": FPS, "video_length": TOTAL_N_FRAMES, "video_path": 'path_to_video'},
#          "preds": {frame_i: {'safe': PROBABILITY, 'unsafe': PROBABILITY}, ....}}

Detector Usage:

# Import module
from nudenet import NudeDetector

# initialize detector (downloads the checkpoint file automatically the first time)
detector = NudeDetector() # detector = NudeDetector('base') for the "base" version of detector.

# Detect single image
detector.detect('path_to_image')
# Returns [{'box': LIST_OF_COORDINATES, 'score': PROBABILITY, 'label': LABEL}, ...]

# Detect video
# batch_size is optional; defaults to 2
# show_progress is optional; defaults to True
detector.detect_video('path_to_video', batch_size=BATCH_SIZE, show_progress=BOOLEAN)
# Returns {"metadata": {"fps": FPS, "video_length": TOTAL_N_FRAMES, "video_path": 'path_to_video'},
#          "preds": {frame_i: {'box': LIST_OF_COORDINATES, 'score': PROBABILITY, 'label': LABEL}, ...], ....}}

Notes:

  • detect_video and classify_video first identify the "unique" frames in a video and run predictions on them for significant performance improvement.
  • V1 of NudeDetector (available in master branch of this repo) was trained on 12000 images labelled by the good folks at cti-community.
  • V2 (current version) of NudeDetector is trained on 160,000 entirely auto-labelled (using classification heat maps and various other hybrid techniques) images.
  • The entire data for the classifier is available at https://archive.org/details/NudeNet_classifier_dataset_v1
  • A part of the auto-labelled data (Images are from the classifier dataset above) used to train the base Detector is available at https://github.com/notAI-tech/NudeNet/releases/download/v0/DETECTOR_AUTO_GENERATED_DATA.zip

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