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import threading |
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import numpy |
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import opennsfw2 |
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from PIL import Image |
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from keras import Model |
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from roop.typing import Frame |
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PREDICTOR = None |
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THREAD_LOCK = threading.Lock() |
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MAX_PROBABILITY = 0.85 |
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def get_predictor() -> Model: |
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global PREDICTOR |
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with THREAD_LOCK: |
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if PREDICTOR is None: |
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PREDICTOR = opennsfw2.make_open_nsfw_model() |
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return PREDICTOR |
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def clear_predictor() -> None: |
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global PREDICTOR |
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PREDICTOR = None |
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def predict_frame(target_frame: Frame) -> bool: |
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image = Image.fromarray(target_frame) |
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image = opennsfw2.preprocess_image(image, opennsfw2.Preprocessing.YAHOO) |
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views = numpy.expand_dims(image, axis=0) |
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_, probability = get_predictor().predict(views)[0] |
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return probability > MAX_PROBABILITY |
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def predict_image(target_path: str) -> bool: |
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return opennsfw2.predict_image(target_path) > MAX_PROBABILITY |
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def predict_video(target_path: str) -> bool: |
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_, probabilities = opennsfw2.predict_video_frames(video_path=target_path, frame_interval=100) |
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return any(probability > MAX_PROBABILITY for probability in probabilities) |
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