added deepbooru settings (threshold and sort by alpha or likelyhood)
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@ -3,31 +3,32 @@ from concurrent.futures import ProcessPoolExecutor
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import multiprocessing
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import time
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def get_deepbooru_tags(pil_image, threshold=0.5):
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def get_deepbooru_tags(pil_image):
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"""
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This method is for running only one image at a time for simple use. Used to the img2img interrogate.
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"""
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from modules import shared # prevents circular reference
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create_deepbooru_process(threshold)
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create_deepbooru_process(shared.opts.deepbooru_threshold, shared.opts.deepbooru_sort_alpha)
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shared.deepbooru_process_return["value"] = -1
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shared.deepbooru_process_queue.put(pil_image)
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while shared.deepbooru_process_return["value"] == -1:
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time.sleep(0.2)
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tags = shared.deepbooru_process_return["value"]
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release_process()
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return tags
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def deepbooru_process(queue, deepbooru_process_return, threshold):
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def deepbooru_process(queue, deepbooru_process_return, threshold, alpha_sort):
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model, tags = get_deepbooru_tags_model()
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while True: # while process is running, keep monitoring queue for new image
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pil_image = queue.get()
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if pil_image == "QUIT":
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break
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else:
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deepbooru_process_return["value"] = get_deepbooru_tags_from_model(model, tags, pil_image, threshold)
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deepbooru_process_return["value"] = get_deepbooru_tags_from_model(model, tags, pil_image, threshold, alpha_sort)
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def create_deepbooru_process(threshold=0.5):
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def create_deepbooru_process(threshold, alpha_sort):
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"""
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Creates deepbooru process. A queue is created to send images into the process. This enables multiple images
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to be processed in a row without reloading the model or creating a new process. To return the data, a shared
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@ -40,7 +41,7 @@ def create_deepbooru_process(threshold=0.5):
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shared.deepbooru_process_queue = shared.deepbooru_process_manager.Queue()
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shared.deepbooru_process_return = shared.deepbooru_process_manager.dict()
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shared.deepbooru_process_return["value"] = -1
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shared.deepbooru_process = multiprocessing.Process(target=deepbooru_process, args=(shared.deepbooru_process_queue, shared.deepbooru_process_return, threshold))
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shared.deepbooru_process = multiprocessing.Process(target=deepbooru_process, args=(shared.deepbooru_process_queue, shared.deepbooru_process_return, threshold, alpha_sort))
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shared.deepbooru_process.start()
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@ -80,7 +81,7 @@ def get_deepbooru_tags_model():
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return model, tags
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def get_deepbooru_tags_from_model(model, tags, pil_image, threshold=0.5):
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def get_deepbooru_tags_from_model(model, tags, pil_image, threshold, alpha_sort):
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import deepdanbooru as dd
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import tensorflow as tf
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import numpy as np
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@ -105,15 +106,28 @@ def get_deepbooru_tags_from_model(model, tags, pil_image, threshold=0.5):
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for i, tag in enumerate(tags):
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result_dict[tag] = y[i]
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result_tags_out = []
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unsorted_tags_in_theshold = []
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result_tags_print = []
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for tag in tags:
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if result_dict[tag] >= threshold:
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if tag.startswith("rating:"):
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continue
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result_tags_out.append(tag)
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unsorted_tags_in_theshold.append((result_dict[tag], tag))
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result_tags_print.append(f'{result_dict[tag]} {tag}')
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# sort tags
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result_tags_out = []
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sort_ndx = 0
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print(alpha_sort)
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if alpha_sort:
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sort_ndx = 1
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# sort by reverse by likelihood and normal for alpha
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unsorted_tags_in_theshold.sort(key=lambda y: y[sort_ndx], reverse=(not alpha_sort))
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for weight, tag in unsorted_tags_in_theshold:
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result_tags_out.append(tag)
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print('\n'.join(sorted(result_tags_print, reverse=True)))
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return ', '.join(result_tags_out).replace('_', ' ').replace(':', ' ')
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return ', '.join(result_tags_out).replace('_', ' ').replace(':', ' ')
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@ -261,6 +261,12 @@ options_templates.update(options_section(('sampler-params', "Sampler parameters"
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's_noise': OptionInfo(1.0, "sigma noise", gr.Slider, {"minimum": 0.0, "maximum": 1.0, "step": 0.01}),
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}))
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if cmd_opts.deepdanbooru:
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options_templates.update(options_section(('deepbooru-params', "DeepBooru parameters"), {
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"deepbooru_sort_alpha": OptionInfo(True, "Sort Alphabetical", gr.Checkbox),
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'deepbooru_threshold': OptionInfo(0.5, "Threshold", gr.Slider, {"minimum": 0.0, "maximum": 1.0, "step": 0.01}),
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}))
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class Options:
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data = None
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