| import numpy as np |
| import mediapipe as mp |
| import uuid |
| import os |
|
|
| from PIL import Image |
| from mediapipe.tasks import python |
| from mediapipe.tasks.python import vision |
| from scipy.ndimage import binary_dilation |
| from croper import Croper |
|
|
| segment_model = "checkpoints/selfie_multiclass_256x256.tflite" |
| base_options = python.BaseOptions(model_asset_path=segment_model) |
| options = vision.ImageSegmenterOptions(base_options=base_options,output_category_mask=True) |
| segmenter = vision.ImageSegmenter.create_from_options(options) |
|
|
| def restore_result(croper, category, generated_image): |
| square_length = croper.square_length |
| generated_image = generated_image.resize((square_length, square_length)) |
|
|
| cropped_generated_image = generated_image.crop((croper.square_start_x, croper.square_start_y, croper.square_end_x, croper.square_end_y)) |
| cropped_square_mask_image = get_restore_mask_image(croper, category, cropped_generated_image) |
|
|
| restored_image = croper.input_image.copy() |
| restored_image.paste(cropped_generated_image, (croper.origin_start_x, croper.origin_start_y), cropped_square_mask_image) |
|
|
| extension = 'png' |
| |
| |
| |
| |
|
|
| tmpPrefix = "/tmp/gradio/" |
|
|
| targetDir = f"{tmpPrefix}output/" |
| if not os.path.exists(targetDir): |
| os.makedirs(targetDir) |
|
|
| path = f"{targetDir}{uuid.uuid4()}.{extension}" |
| restored_image.save(path, quality=100) |
|
|
| return restored_image, path |
|
|
| def segment_image(input_image, category, input_size, mask_expansion, mask_dilation): |
| mask_size = int(input_size) |
| mask_expansion = int(mask_expansion) |
|
|
| image = mp.Image(image_format=mp.ImageFormat.SRGB, data=np.asarray(input_image)) |
| segmentation_result = segmenter.segment(image) |
| category_mask = segmentation_result.category_mask |
| category_mask_np = category_mask.numpy_view() |
|
|
| if category == "hair": |
| target_mask = get_hair_mask(category_mask_np, mask_dilation) |
| elif category == "clothes": |
| target_mask = get_clothes_mask(category_mask_np, mask_dilation) |
| elif category == "face": |
| target_mask = get_face_mask(category_mask_np, mask_dilation) |
| else: |
| target_mask = get_face_mask(category_mask_np, mask_dilation) |
| |
| croper = Croper(input_image, target_mask, mask_size, mask_expansion) |
| croper.corp_mask_image() |
| origin_area_image = croper.resized_square_image |
|
|
| return origin_area_image, croper |
|
|
| def get_face_mask(category_mask_np, dilation=1): |
| face_skin_mask = category_mask_np == 3 |
| if dilation > 0: |
| face_skin_mask = binary_dilation(face_skin_mask, iterations=dilation) |
|
|
| return face_skin_mask |
|
|
| def get_clothes_mask(category_mask_np, dilation=1): |
| body_skin_mask = category_mask_np == 2 |
| clothes_mask = category_mask_np == 4 |
| combined_mask = np.logical_or(body_skin_mask, clothes_mask) |
| combined_mask = binary_dilation(combined_mask, iterations=4) |
| if dilation > 0: |
| combined_mask = binary_dilation(combined_mask, iterations=dilation) |
| return combined_mask |
|
|
| def get_hair_mask(category_mask_np, dilation=1): |
| hair_mask = category_mask_np == 1 |
| if dilation > 0: |
| hair_mask = binary_dilation(hair_mask, iterations=dilation) |
| return hair_mask |
|
|
| def get_restore_mask_image(croper, category, generated_image): |
| image = mp.Image(image_format=mp.ImageFormat.SRGB, data=np.asarray(generated_image)) |
| segmentation_result = segmenter.segment(image) |
| category_mask = segmentation_result.category_mask |
| category_mask_np = category_mask.numpy_view() |
|
|
| if category == "hair": |
| target_mask = get_hair_mask(category_mask_np, 0) |
| elif category == "clothes": |
| target_mask = get_clothes_mask(category_mask_np, 0) |
| elif category == "face": |
| target_mask = get_face_mask(category_mask_np, 0) |
| |
| combined_mask = np.logical_or(target_mask, croper.corp_mask) |
| mask_image = Image.fromarray((combined_mask * 255).astype(np.uint8)) |
| return mask_image |