Files
AiDA_Python/app/service/design/utils/synthesis_item.py

176 lines
6.8 KiB
Python
Raw Blame History

This file contains ambiguous Unicode characters
This file contains Unicode characters that might be confused with other characters. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.
#!/usr/bin/env python
# -*- coding: UTF-8 -*-
"""
@Project trinity_client
@File synthesis_item.py
@Author :周成融
@Date 2023/8/26 14:13:04
@detail
"""
import io
import logging
import time
import boto3
import cv2
import numpy as np
from PIL import Image
from minio import Minio
from app.core.config import *
from app.service.utils.decorator import RunTime
from app.service.utils.generate_uuid import generate_uuid
minio_client = Minio(
MINIO_URL,
access_key=MINIO_ACCESS,
secret_key=MINIO_SECRET,
secure=MINIO_SECURE)
s3 = boto3.client(
's3',
aws_access_key_id="AKIAVD3OJIMF6UJFLSHZ",
aws_secret_access_key="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",
region_name="ap-east-1"
)
def positioning(all_mask_shape, mask_shape, offset):
all_start = 0
all_end = 0
mask_start = 0
mask_end = 0
if offset == 0:
all_start = 0
all_end = min(all_mask_shape, mask_shape)
mask_start = 0
mask_end = min(all_mask_shape, mask_shape)
elif offset > 0:
all_start = min(offset, all_mask_shape)
all_end = min(offset + mask_shape, all_mask_shape)
mask_start = 0
mask_end = 0 if offset > all_mask_shape else min(all_mask_shape - offset, mask_shape)
elif offset < 0:
if abs(offset) > mask_shape:
all_start = 0
all_end = 0
else:
all_start = 0
if mask_shape - abs(offset) > all_mask_shape:
all_end = min(mask_shape - abs(offset), all_mask_shape)
else:
all_end = mask_shape - abs(offset)
if abs(offset) > mask_shape:
mask_start = mask_shape
mask_end = mask_shape
else:
mask_start = abs(offset)
if mask_shape - abs(offset) >= all_mask_shape:
mask_end = all_mask_shape + abs(offset)
else:
mask_end = mask_shape
return all_start, all_end, mask_start, mask_end
@RunTime
def synthesis(data, size):
# 创建底图
base_image = Image.new('RGBA', size, (0, 0, 0, 0))
try:
all_mask_shape = (size[1], size[0])
top_outer_mask = np.zeros(all_mask_shape, dtype=np.uint8)
bottom_outer_mask = np.zeros(all_mask_shape, dtype=np.uint8)
top = True
bottom = True
i = len(data)
while i:
i -= 1
if top and data[i]['name'] in ["blouse_front", "outwear_front", "dress_front", "tops_front"]:
top = False
mask_shape = data[i]['mask'].shape
y_offset, x_offset = data[i]['position']
# 初始化叠加区域的起始和结束位置
all_y_start, all_y_end, mask_y_start, mask_y_end = positioning(all_mask_shape=all_mask_shape[0], mask_shape=mask_shape[0], offset=y_offset)
all_x_start, all_x_end, mask_x_start, mask_x_end = positioning(all_mask_shape=all_mask_shape[1], mask_shape=mask_shape[1], offset=x_offset)
# 将叠加区域赋值为相应的像素值
top_outer_mask[all_y_start:all_y_end, all_x_start:all_x_end] = data[i]['mask'][mask_y_start:mask_y_end, mask_x_start:mask_x_end]
elif bottom and data[i]['name'] in ["trousers_front", "skirt_front", "bottoms_front"]:
bottom = False
mask_shape = data[i]['mask'].shape
y_offset, x_offset = data[i]['position']
# 初始化叠加区域的起始和结束位置
all_y_start, all_y_end, mask_y_start, mask_y_end = positioning(all_mask_shape=all_mask_shape[0], mask_shape=mask_shape[0], offset=y_offset)
all_x_start, all_x_end, mask_x_start, mask_x_end = positioning(all_mask_shape=all_mask_shape[1], mask_shape=mask_shape[1], offset=x_offset)
# 将叠加区域赋值为相应的像素值
bottom_outer_mask[all_y_start:all_y_end, all_x_start:all_x_end] = data[i]['mask'][mask_y_start:mask_y_end, mask_x_start:mask_x_end]
elif bottom is False and top is False:
break
all_mask = cv2.bitwise_or(top_outer_mask, bottom_outer_mask)
for layer in data:
if layer['image'] is not None:
if layer['name'] != "body":
test_image = Image.new('RGBA', size, (0, 0, 0, 0))
test_image.paste(layer['image'], (layer['position'][1], layer['position'][0]), layer['image'])
mask_data = np.where(all_mask > 0, 255, 0).astype(np.uint8)
mask_alpha = Image.fromarray(mask_data)
cropped_image = Image.composite(test_image, Image.new("RGBA", test_image.size, (255, 255, 255, 0)), mask_alpha)
base_image.paste(cropped_image, (0, 0), cropped_image)
else:
base_image.paste(layer['image'], (layer['position'][1], layer['position'][0]), layer['image'])
result_image = base_image
with io.BytesIO() as output:
result_image.save(output, format='PNG')
data = output.getvalue()
image_data = io.BytesIO()
result_image.save(image_data, format='PNG')
image_data.seek(0)
image_bytes = image_data.read()
return f"aida-results/{minio_client.put_object('aida-results', f'result_{generate_uuid()}.png', io.BytesIO(image_bytes), len(image_bytes), content_type='image/png').object_name}"
# object_name = f'result_{generate_uuid()}.png'
# response = s3.put_object(Bucket="aida-results", Key=object_name, Body=data, ContentType='image/png')
# object_url = f"aida-results/{object_name}"
# if response['ResponseMetadata']['HTTPStatusCode'] == 200:
# return object_url
# else:
# return ""
except Exception as e:
logging.warning(f"synthesis runtime exception : {e}")
def synthesis_single(front_image, back_image):
result_image = None
if front_image:
result_image = front_image
if back_image:
result_image.paste(back_image, (0, 0), back_image)
with io.BytesIO() as output:
result_image.save(output, format='PNG')
data = output.getvalue()
# image_data = io.BytesIO()
# result_image.save(image_data, format='PNG')
# image_data.seek(0)
# image_bytes = image_data.read()
# return f"aida-results/{minio_client.put_object('aida-results', f'result_{generate_uuid()}.png', io.BytesIO(image_bytes), len(image_bytes), content_type='image/png').object_name}"
object_name = f'result_{generate_uuid()}.png'
response = s3.put_object(Bucket="aida-results", Key=object_name, Body=data, ContentType='image/png')
object_url = f"aida-results/{object_name}"
if response['ResponseMetadata']['HTTPStatusCode'] == 200:
return object_url
else:
return ""