import cv2 import numpy as np from PIL import Image from minio import Minio from app.core.config import MINIO_URL, MINIO_ACCESS, MINIO_SECRET, MINIO_SECURE from app.schemas.mannequin_edit import MannequinModel from app.service.utils.new_oss_client import oss_get_image, oss_upload_image minio_client = Minio(MINIO_URL, access_key=MINIO_ACCESS, secret_key=MINIO_SECRET, secure=MINIO_SECURE) class MannequinEditService(): def __init__(self, request_data): self.resize_pixel = request_data.resize_pixel self.top = request_data.top self.bottom = request_data.bottom self.image = oss_get_image(oss_client=minio_client, bucket=request_data.mannequins.split('/')[0], object_name=request_data.mannequins[request_data.mannequins.find('/') + 1:], data_type="cv2") self.mannequin_name = request_data.mannequin_name self.bucket_name = request_data.bucket_name if self.image.shape[2] == 4: self.bgr = self.image[:, :, :3] self.alpha = self.image[:, :, 3] self.bgr = cv2.bitwise_and(self.bgr, self.bgr, mask=cv2.normalize(self.alpha, None, 0, 1, cv2.NORM_MINMAX)) self.h, self.w, _ = self.bgr.shape else: self.bgr = self.image self.h, self.w, _ = self.bgr.shape self.alpha = None def __call__(self, *args, **kwargs): new_mannequin = self.resize_leg(self.top, self.bottom) _, encoded_image = cv2.imencode('.png', new_mannequin) image_bytes = encoded_image.tobytes() req = oss_upload_image(oss_client=minio_client, bucket=self.bucket_name, object_name=f"{self.mannequin_name}.png", image_bytes=image_bytes) return req.bucket_name + "/" + req.object_name def post_processing(self, image): # 原始图片的尺寸 original_width, original_height = image.size # 计算宽度和高度的缩放比例 width_ratio = self.w / original_width height_ratio = self.h / original_height # 选择较小的缩放比例,确保图片能完整放入目标图片中 scale_ratio = min(width_ratio, height_ratio) # 计算调整后的尺寸 new_width = int(original_width * scale_ratio) new_height = int(original_height * scale_ratio) # 调整图片大小 resized_image = image.resize((new_width, new_height)) # 创建一个 512x768 的透明图片 result_image = Image.new("RGBA", (self.w, self.h), (255, 255, 255, 0)) # 计算需要粘贴的位置,使图片居中 x_offset = (self.w - new_width) // 2 y_offset = (self.h - new_height) // 2 # 将调整大小后的图片粘贴到透明图片上 if resized_image.mode == "RGBA": result_image.paste(resized_image, (x_offset, y_offset), mask=resized_image.split()[3]) else: result_image.paste(resized_image, (x_offset, y_offset)) image = np.array(result_image) return image def resize_leg(self, top, bottom): # 上部 top_part = self.bgr[:top, :] top_part_alpha = self.alpha[:top, :] # 需要resize 部分 part_resize = self.bgr[top:bottom, :] part_resize_alpha = self.alpha[top:bottom, :] # 下部 part_bottom = self.bgr[bottom:, :] part_bottom_alpha = self.alpha[bottom:, :] new_height = int((bottom - top) + self.resize_pixel) resized_thigh = cv2.resize(part_resize, (self.w, new_height), interpolation=cv2.INTER_LINEAR) resized_thigh_alpha = cv2.resize(part_resize_alpha, (self.w, new_height), interpolation=cv2.INTER_LINEAR) # 组合 new_bgr = np.vstack((top_part, resized_thigh, part_bottom)) new_bgr_alpha = np.vstack((top_part_alpha, resized_thigh_alpha, part_bottom_alpha)) if self.alpha is not None: # 拼接 alpha 通道 # 合并 BGR 通道和 alpha 通道 new_image = np.dstack((new_bgr, new_bgr_alpha)) else: new_image = new_bgr new_image = self.post_processing(Image.fromarray(new_image)) return new_image if __name__ == '__main__': request_data = MannequinModel( mannequins="aida-sys-image/models/male/dc36ce58-46c3-4b6f-8787-5ca7d6fc26e6.png", resize_pixel=-100, bucket_name="test", mannequin_name="mannequin_name", top=270, bottom=432 ) service = MannequinEditService(request_data) print(service())