Demo of the classifier available at http://bpraneeth.com/projects/nudenet
Code used to create the demo available at notAI-tech#16 (comment)
Uncensored version of the following image can be found at https://i.imgur.com/rga6845.jpg (NSFW)
Classification scores on the data available at https://dataturks.com/projects/Mohan/NSFW(Nudity%20Detection)%20Image%20Moderation%20Datatset
nude -> image contains nudity
safe -> image doesn't contain nudity
BELLY -> exposed belly (both male and female)
BUTTOCKS -> exposed buttocks (both male and female)
F_BREAST -> exposed female breast
F_GENITALIA -> exposed female genitalia
M_GENITALIA -> exposed male genitalia
M_BREAST -> exposed male breast
pip install nudenet
# or
pip install git+https://github.com/bedapudi6788/NudeNet
from nudenet import NudeClassifier
classifier = NudeClassifier()
classifier.classify('path_to_nude_image')
# {'path_to_nude_image': {'safe': 5.8822202e-08, 'unsafe': 1.0}}
# Get the docker image
docker pull bedapudi6788/nudeclassifier:v1
docker run -d -p 8500:8500 bedapudi6788/nudeclassifier:v1
# Installing python client
pip install nudeclient
import nudeclient
# Single image prediction
nudeclient.predict('path_to_nude_image')
{'path_to_nude_image': {'safe': 5.8822202e-08, 'unsafe': 1.0}}
# Batch predictions
nudeclient.predict(['path_to_image_1', 'path_to_image2])
{'path_to_image_1': {'safe': 5.8822202e-08, 'unsafe': 1.0}, 'path_to_image_2': {'safe': 5.8822202e-08, 'unsafe': 1.0}}
from nudenet import NudeDetector
detector = NudeDetector()
# Performing detection
detector.detect('path_to_nude_image')
# [{'box': [352, 688, 550, 858], 'score': 0.9603578, 'label': 'BELLY'}, {'box': [507, 896, 586, 1055], 'score': 0.94103414, 'label': 'F_GENITALIA'}, {'box': [221, 467, 552, 650], 'score': 0.8011624, 'label': 'F_BREAST'}, {'box': [359, 464, 543, 626], 'score': 0.6324697, 'label': 'F_BREAST'}]
# Censoring an image
detector.censor('path_to_nude_image', out_path='censored_image_path', visualize=False)
Classifier data available at https://archive.org/details/NudeNet_classifier_dataset_v1
- Improve Documentation for the functions. (Right now user has to see the function definition to understand all the params)
- Convert these models into tflite, tfjs and create another repo that used tfjs to perform in browser detection and censor.
Note: Entire credit for collecting the object recognition dataset goes to http://www.cti-community.net/ (NSFW). The link for their api and the discord are as follows API here: http://pury.fi/ Discord: https://discord.gg/k4qM4Jh
Although nudenet is licensed under GPL, if you want to use it commercially without open sourcing your code please email me or raise an issue in this repo so that I can provide you explicit written permission to use as you wish. The only reason for doing this is, it would be nice to know if some company is using my work.