An ensemble of Neural Nets for Nudity Detection and Censoring
Project description
NudeNet: Neural Nets for Nudity Classification, Detection and selective censoring
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 | 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
Note: golang example https://github.com/notAI-tech/NudeNet/issues/63#issuecomment-729555360, thanks to Preetham Kamidi
As Python module
Installation:
pip install --upgrade nudenet
pip install git+https://github.com/Sterrenhemel/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}, ....}}
Thanks to Johnny Urosevic, NudeClassifier is also available in tflite.
TFLite Classifier Usage:
# Import module
from nudenet import NudeClassifierLite
# initialize classifier (downloads the checkpoint file automatically the first time)
classifier_lite = NudeClassifierLite()
# Classify single image
classifier_lite.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_lite.classify(['path_to_image_1', 'path_to_image_2'])
# Returns {'path_to_image_1': {'safe': PROBABILITY, 'unsafe': PROBABILITY},
# 'path_to_image_2': {'safe': PROBABILITY, 'unsafe': PROBABILITY}}
Using the tflite classifier from flutter: https://github.com/ndaysinaiK/nude-test
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')
# fast mode is ~3x faster compared to default mode with slightly lower accuracy.
detector.detect('path_to_image', mode='fast')
# 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)
# fast mode is ~3x faster compared to default mode with slightly lower accuracy.
detector.detect_video('path_to_video', batch_size=BATCH_SIZE, show_progress=BOOLEAN, mode='fast')
# 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
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
File details
Details for the file VNudeNet-2.1.0.tar.gz
.
File metadata
- Download URL: VNudeNet-2.1.0.tar.gz
- Upload date:
- Size: 24.3 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/4.0.2 CPython/3.8.14
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | b6cacd1bc01a5f7c9ebc9435a425413df92be8b1d8433048ad816682bc16357e |
|
MD5 | 8bdf00b886b9dc942c53239bdb2c6b8e |
|
BLAKE2b-256 | 01f2eda2359935c1db79b67e9d59975c09e10f69dda33be4925d9b86e6199c3e |
File details
Details for the file VNudeNet-2.1.0-py3-none-any.whl
.
File metadata
- Download URL: VNudeNet-2.1.0-py3-none-any.whl
- Upload date:
- Size: 24.9 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/4.0.2 CPython/3.8.14
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 7aa005fa3c1dd791c1af400d0410ae0dcf522b1f534e11bca19d4ae14974d4aa |
|
MD5 | 1c8ff0d5fce7a4848cda4336b577f963 |
|
BLAKE2b-256 | 6ddae106e775a8a9a2138c3b6404470a640b90859029131ed6ff35b4fc4e47ea |