OmniGenMe / app.py
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import gradio as gr
from PIL import Image
import os
from threading import Lock
from OmniGen import OmniGenPipeline
class OmniGenManager:
def __init__(self):
self.pipe = None
self.lock = Lock()
self.current_quantization = None
def get_pipeline(self, quantization: bool) -> OmniGenPipeline:
"""
Get or initialize the pipeline with the specified quantization setting.
Uses a lock to ensure thread safety.
"""
with self.lock:
# Only reinitialize if quantization setting changed or pipeline doesn't exist
if self.pipe is None or self.current_quantization != quantization:
# Clear any existing pipeline
if self.pipe is not None:
del self.pipe
self.pipe = None
# Initialize new pipeline
self.pipe = OmniGenPipeline.from_pretrained(
"Shitao/OmniGen-v1",
Quantization=quantization
)
self.current_quantization = quantization
return self.pipe
# Create a single instance of the manager
pipeline_manager = OmniGenManager()
def generate_image(text, img1, img2, img3, height, width, guidance_scale, img_guidance_scale, inference_steps, seed, quantization):
input_images = [img1, img2, img3]
# 去除 None
input_images = [img for img in input_images if img is not None]
if len(input_images) == 0:
input_images = None
# Get or initialize pipeline with current settings
pipe = pipeline_manager.get_pipeline(quantization)
# Generate image
output = pipe(
prompt=text,
input_images=input_images,
height=height,
width=width,
guidance_scale=guidance_scale,
img_guidance_scale=1.6,
num_inference_steps=inference_steps,
separate_cfg_infer=True, # set False can speed up the inference process
use_kv_cache=False,
seed=seed,
)
img = output[0]
return img
# def generate_image(text, img1, img2, img3, height, width, guidance_scale, inference_steps):
# input_images = []
# if img1:
# input_images.append(Image.open(img1))
# if img2:
# input_images.append(Image.open(img2))
# if img3:
# input_images.append(Image.open(img3))
# return input_images[0] if input_images else None
def get_example():
case = [
[
"A curly-haired man in a red shirt is drinking tea.",
None,
None,
None,
1024,
1024,
2.5,
1.6,
50,
0,
],
[
"The woman in <img><|image_1|></img> waves her hand happily in the crowd",
"./imgs/test_cases/zhang.png",
None,
None,
1024,
1024,
2.5,
1.9,
50,
128,
],
[
"A man in a black shirt is reading a book. The man is the right man in <img><|image_1|></img>.",
"./imgs/test_cases/two_man.jpg",
None,
None,
1024,
1024,
2.5,
1.6,
50,
0,
],
[
"Two woman are raising fried chicken legs in a bar. A woman is <img><|image_1|></img>. The other woman is <img><|image_2|></img>.",
"./imgs/test_cases/mckenna.jpg",
"./imgs/test_cases/Amanda.jpg",
None,
1024,
1024,
2.5,
1.8,
50,
168,
],
[
"A man and a short-haired woman with a wrinkled face are standing in front of a bookshelf in a library. The man is the man in the middle of <img><|image_1|></img>, and the woman is oldest woman in <img><|image_2|></img>",
"./imgs/test_cases/1.jpg",
"./imgs/test_cases/2.jpg",
None,
1024,
1024,
2.5,
1.6,
50,
60,
],
[
"A man and a woman are sitting at a classroom desk. The man is the man with yellow hair in <img><|image_1|></img>. The woman is the woman on the left of <img><|image_2|></img>",
"./imgs/test_cases/3.jpg",
"./imgs/test_cases/4.jpg",
None,
1024,
1024,
2.5,
1.8,
50,
66,
],
[
"The flower <img><|image_1|><\/img> is placed in the vase which is in the middle of <img><|image_2|><\/img> on a wooden table of a living room",
"./imgs/test_cases/rose.jpg",
"./imgs/test_cases/vase.jpg",
None,
1024,
1024,
2.5,
1.6,
50,
0,
],
[
"<img><|image_1|><img>\n Remove the woman's earrings. Replace the mug with a clear glass filled with sparkling iced cola.",
"./imgs/demo_cases/t2i_woman_with_book.png",
None,
None,
1024,
1024,
2.5,
1.6,
50,
222,
],
[
"Detect the skeleton of human in this image: <img><|image_1|></img>.",
"./imgs/test_cases/control.jpg",
None,
None,
1024,
1024,
2.0,
1.6,
50,
0,
],
[
"Generate a new photo using the following picture and text as conditions: <img><|image_1|><img>\n A young boy is sitting on a sofa in the library, holding a book. His hair is neatly combed, and a faint smile plays on his lips, with a few freckles scattered across his cheeks. The library is quiet, with rows of shelves filled with books stretching out behind him.",
"./imgs/demo_cases/skeletal.png",
None,
None,
1024,
1024,
2,
1.6,
50,
42,
],
[
"Following the pose of this image <img><|image_1|><img>, generate a new photo: A young boy is sitting on a sofa in the library, holding a book. His hair is neatly combed, and a faint smile plays on his lips, with a few freckles scattered across his cheeks. The library is quiet, with rows of shelves filled with books stretching out behind him.",
"./imgs/demo_cases/edit.png",
None,
None,
1024,
1024,
2.0,
1.6,
50,
123,
],
[
"Following the depth mapping of this image <img><|image_1|><img>, generate a new photo: A young girl is sitting on a sofa in the library, holding a book. His hair is neatly combed, and a faint smile plays on his lips, with a few freckles scattered across his cheeks. The library is quiet, with rows of shelves filled with books stretching out behind him.",
"./imgs/demo_cases/edit.png",
None,
None,
1024,
1024,
2.0,
1.6,
50,
1,
],
[
"<img><|image_1|><\/img> What item can be used to see the current time? Please remove it.",
"./imgs/test_cases/watch.jpg",
None,
None,
1024,
1024,
2.5,
1.6,
50,
0,
],
[
"According to the following examples, generate an output for the input.\nInput: <img><|image_1|></img>\nOutput: <img><|image_2|></img>\n\nInput: <img><|image_3|></img>\nOutput: ",
"./imgs/test_cases/icl1.jpg",
"./imgs/test_cases/icl2.jpg",
"./imgs/test_cases/icl3.jpg",
1024,
1024,
2.5,
1.6,
50,
1,
],
]
return case
def run_for_examples(text, img1, img2, img3, height, width, guidance_scale, img_guidance_scale, inference_steps, seed):
return generate_image(text, img1, img2, img3, height, width, guidance_scale, img_guidance_scale, inference_steps, seed)
description = """
OmniGen is a unified image generation model that you can use to perform various tasks, including but not limited to text-to-image generation, subject-driven generation, Identity-Preserving Generation, and image-conditioned generation.
For multi-modal to image generation, you should pass a string as `prompt`, and a list of image paths as `input_images`. The placeholder in the prompt should be in the format of `<img><|image_*|></img>` (for the first image, the placeholder is <img><|image_1|></img>. for the second image, the the placeholder is <img><|image_2|></img>).
For example, use an image of a woman to generate a new image:
prompt = "A woman holds a bouquet of flowers and faces the camera. Thw woman is \<img\>\<|image_1|\>\</img\>."
Tips:
- Oversaturated: If the image appears oversaturated, please reduce the `guidance_scale`.
- Low-quality: More detailed prompt will lead to better results.
- Animate Style: If the genereate images is in animate style, you can try to add `photo` to the prompt`.
- Edit generated image. If you generate a image by omnigen and then want to edit it, you cannot use the same seed to edit this image. For example, use seed=0 to generate image, and should use seed=1 to edit this image.
- For image editing tasks, we recommend placing the image before the editing instruction. For example, use `<img><|image_1|></img> remove suit`, rather than `remove suit <img><|image_1|></img>`.
"""
# Gradio 接口
with gr.Blocks() as demo:
gr.Markdown("# OmniGen: Unified Image Generation [paper](https://arxiv.org/abs/2409.11340) [code](https://github.com/VectorSpaceLab/OmniGen)")
gr.Markdown(description)
with gr.Row():
with gr.Column():
# 文本输入框
prompt_input = gr.Textbox(
label="Enter your prompt, use <img><|image_i|></img> to represent i-th input image", placeholder="Type your prompt here..."
)
with gr.Row(equal_height=True):
# 图片上传框
image_input_1 = gr.Image(label="<img><|image_1|></img>", type="filepath")
image_input_2 = gr.Image(label="<img><|image_2|></img>", type="filepath")
image_input_3 = gr.Image(label="<img><|image_3|></img>", type="filepath")
# 高度和宽度滑块
height_input = gr.Slider(
label="Height", minimum=256, maximum=2048, value=1024, step=16
)
width_input = gr.Slider(
label="Width", minimum=256, maximum=2048, value=1024, step=16
)
# 引导尺度输入
guidance_scale_input = gr.Slider(
label="Guidance Scale", minimum=1.0, maximum=5.0, value=2.5, step=0.1
)
img_guidance_scale_input = gr.Slider(
label="img_guidance_scale", minimum=1.0, maximum=2.0, value=1.6, step=0.1
)
num_inference_steps = gr.Slider(
label="Inference Steps", minimum=1, maximum=100, value=50, step=1
)
Quantization = gr.Checkbox(
label="Low VRAM (8-bit Quantization)", value=True
)
seed_input = gr.Slider(
label="Seed", minimum=0, maximum=2147483647, value=42, step=1
)
# 生成按钮
generate_button = gr.Button("Generate Image")
with gr.Column():
# 输出图像框
output_image = gr.Image(label="Output Image")
# 按钮点击事件
generate_button.click(
generate_image,
inputs=[
prompt_input,
image_input_1,
image_input_2,
image_input_3,
height_input,
width_input,
guidance_scale_input,
img_guidance_scale_input,
num_inference_steps,
seed_input,
Quantization,
],
outputs=output_image,
)
gr.Examples(
examples=get_example(),
fn=run_for_examples,
inputs=[
prompt_input,
image_input_1,
image_input_2,
image_input_3,
height_input,
width_input,
guidance_scale_input,
img_guidance_scale_input,
num_inference_steps,
seed_input,
Quantization,
],
outputs=output_image,
)
# 启动应用
demo.launch()