opennsfw2 0.14.0

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Description:

opennsfw2 0.14.0

Introduction
Detecting Not-Suitable-For-Work (NSFW) content is a high demand task in
computer vision. While there are many types of NSFW content, here we focus on
the pornographic images and videos.
The Yahoo Open-NSFW model originally
developed with the Caffe framework has been a favourite choice, but the work
is now discontinued and Caffe is also becoming less popular.
Please see the description on the Yahoo project page for
the context, definitions, and model training details.
This Open-NSFW 2 project provides a Keras implementation of the
Yahoo model, with references to its previous third-party
TensorFlow 1 implementation.
Note that Keras 3 is compatible with
TensorFlow, JAX, and PyTorch. However, currently this model is
only guaranteed to work with TensorFlow and JAX.
A simple API is provided for making predictions on images and videos.
Installation
Tested with TensorFlow and JAX, for Python 3.9, 3.10, and 3.11.
A note on PyTorch:
The OpenNSFW 2 model can in fact be run on PyTorch, but the biggest issue is
that the inference output on PyTorch is quite different from
that on TensorFlow and JAX. The reason is still unknown. In addition,
inference is much slower on PyTorch probably because of the issues
discussed here,
i.e., PyTorch uses channels_first for its image data format, but this model
uses channels_last (as in TensorFLow and JAX), hence Keras has to
convert the channel order back and forth at each layer.
Therefore, at the moment it is not recommended to use PyTorch for this model.
The best way to install Open-NSFW 2 with its dependencies is from PyPI:
python3 -m pip install --upgrade opennsfw2

Alternatively, to obtain the latest version from this repository:
git clone git@github.com:bhky/opennsfw2.git
cd opennsfw2
python3 -m pip install .

Usage
Quick examples for getting started are given below.
For more details, please refer to the API section.
Images
import opennsfw2 as n2

# To get the NSFW probability of a single image, provide your image file path,
# or a `PIL.Image.Image` object.
image_handle = "path/to/your/image.jpg"

nsfw_probability = n2.predict_image(image_handle)

# To get the NSFW probabilities of a list of images, provide a list of file paths,
# or a list of `PIL.Image.Image` objects.
# Using this function is better than looping with `predict_image` as the model
# will only be instantiated once and batching is done during inference.
image_handles = [
"path/to/your/image1.jpg",
"path/to/your/image2.jpg",
# ...
]

nsfw_probabilities = n2.predict_images(image_handles)

Video
import opennsfw2 as n2

# The video can be in any format supported by OpenCV.
video_path = "path/to/your/video.mp4"

# Return two lists giving the elapsed time in seconds and the NSFW probability of each frame.
elapsed_seconds, nsfw_probabilities = n2.predict_video_frames(video_path)

Lower level with Keras
import numpy as np
import opennsfw2 as n2
from PIL import Image

# Load and preprocess image.
image_path = "path/to/your/image.jpg"
pil_image = Image.open(image_path)
image = n2.preprocess_image(pil_image, n2.Preprocessing.YAHOO)
# The preprocessed image is a NumPy array of shape (224, 224, 3).

# Create the model.
# By default, this call will search for the pre-trained weights file from path:
# $HOME/.opennsfw2/weights/open_nsfw_weights.h5
# If not exists, the file will be downloaded from this repository.
# The model is a `keras_core.Model` object.
model = n2.make_open_nsfw_model()

# Make predictions.
inputs = np.expand_dims(image, axis=0) # Add batch axis (for single image).
predictions = model.predict(inputs)

# The shape of predictions is (num_images, 2).
# Each row gives [sfw_probability, nsfw_probability] of an input image, e.g.:
sfw_probability, nsfw_probability = predictions[0]

API
preprocess_image
Apply necessary preprocessing to the input image.

Parameters:

pil_image (PIL.Image.Image): Input as a Pillow image.
preprocessing (Preprocessing enum, default Preprocessing.YAHOO):
See preprocessing details.


Return:

NumPy array of shape (224, 224, 3).



Preprocessing
Enum class for preprocessing options.

Preprocessing.YAHOO
Preprocessing.SIMPLE

make_open_nsfw_model
Create an instance of the NSFW model, optionally with pre-trained weights from Yahoo.

Parameters:

input_shape (Tuple[int, int, int], default (224, 224, 3)):
Input shape of the model, this should not be changed.
weights_path (Optional[str], default $HOME/.opennsfw/weights/open_nsfw_weights.h5):
Path to the weights in HDF5 format to be loaded by the model.
The weights file will be downloaded if not exists.
If None, no weights will be downloaded nor loaded to the model.
Users can provide path if the default is not preferred.
The environment variable OPENNSFW2_HOME can also be used to indicate
where the .opennsfw2/ directory should be located.
name (str, default opennsfw2): Model name to be used for the Keras model object.


Return:

tf.keras.Model object.



predict_image
End-to-end pipeline function from the input image to the predicted NSFW probability.

Parameters:

image_handle (Union[str, PIL.Image.Image]):
Path to the input image file with a format supported by Pillow, or a PIL.Image.Image object.
preprocessing: Same as that in preprocess_image.
weights_path: Same as that in make_open_nsfw_model.
grad_cam_path (Optional[str], default None): If not None, e.g., cam.jpg,
a Gradient-weighted Class Activation Mapping (Grad-CAM)
overlay plot will be saved, which highlights the important region(s) of the
(preprocessed) input image that lead to the prediction.
Note that this feature is currently only supported by the TensorFlow backend.
alpha (float, default 0.8): Opacity of the Grad-CAM layer of the plot,
only valid if grad_cam_path is not None.


Return:

nsfw_probability (float): The predicted NSFW probability of the image.



predict_images
End-to-end pipeline function from the input images to the predicted NSFW probabilities.

Parameters:

image_handles (Union[Sequence[str], Sequence[PIL.Image.Image]]):
List of paths to the input image files with formats supported by Pillow,
or list of PIL.Image.Image objects.
batch_size (int, default 8): Batch size to be used for model inference.
Choose a value that works the best with your device resources.
preprocessing: Same as that in preprocess_image.
weights_path: Same as that in make_open_nsfw_model.
grad_cam_paths (Optional[Sequence[str]], default None): If not None,
the corresponding Grad-CAM plots for the input images will be saved.
See the description in predict_image.
Note that this feature is currently only supported by the TensorFlow backend.
alpha: Same as that in predict_image.


Return:

nsfw_probabilities (List[float]): Predicted NSFW probabilities of the images.



Aggregation
Enum class for aggregation options in video frames prediction.

Aggregation.MEAN
Aggregation.MEDIAN
Aggregation.MAX
Aggregation.MIN

predict_video_frames
End-to-end pipeline function from the input video to predictions.

Parameters:

video_path (str): Path to the input video source.
The video format must be supported by OpenCV.
frame_interval (int, default 8): Prediction will be done on every this
number of frames, starting from frame 1, i.e., if this is 8, then
prediction will only be done on frame 1, 9, 17, etc.
aggregation_size (int, default 8):
Number of frames for which their predicted NSFW probabilities will be aggregated.
For instance, if a prediction will be done "on" frame 9 (decided by frame_interval),
then it actually means prediction will be done on aggregation_size frames
starting from frame 9, e.g., frames 9 to 16 if the size is 8.
The predicted probabilities will be aggregated. After aggregation,
each of these frames in that interval will be assumed the same aggregated probability.
aggregation (Aggregation enum, default Aggregation.MEAN):
The aggregation method.
batch_size (int, default 8, upper-bounded by aggregation_size):
Batch size to be used for model inference. Choose a value that works the best
with your device resources.
output_video_path (Optional[str], default None):
If not None, e.g., out.mp4,
an output MP4 video with the same frame size and frame rate as
the input video will be saved via OpenCV. The predicted NSFW probability
is printed on the top-left corner of each frame. Be aware that the output
file size could be much larger than the input file size.
This output video is for reference only.
preprocessing: Same as that in preprocess_image.
weights_path: Same as that in make_open_nsfw_model.
progress_bar (bool, default True): Whether to show the progress bar.


Return:

Tuple of List[float], each with length equals to the number of video frames.

elapsed_seconds: Video elapsed time in seconds at each frame.
nsfw_probabilities: NSFW probability of each frame.
For any frame_interval > 1, all frames without a prediction
will be assumed to have the NSFW probability of the previous predicted frame.





Preprocessing details
This implementation provides the following preprocessing options.

YAHOO: The default option which was used in the original
Yahoo's Caffe
and the later
TensorFlow 1
implementations. The key steps are:

Resize the input Pillow image to (256, 256).
Store the image as JPEG in memory and reload it again to a NumPy image
(this step is mysterious, but somehow it really makes a difference).
Crop the centre part of the NumPy image with size (224, 224).
Swap the colour channels to BGR.
Subtract the training dataset mean value of each channel: [104, 117, 123].


SIMPLE: A simpler and probably more intuitive preprocessing option is also provided,
but note that the model output probabilities will be different.
The key steps are:

Resize the input Pillow image to (224, 224).
Convert to a NumPy image.
Swap the colour channels to BGR.
Subtract the training dataset mean value of each channel: [104, 117, 123].

License

For personal and professional use. You cannot resell or redistribute these repositories in their original state.

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