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--- |
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license: openrail |
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tags: |
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- stable-diffusion |
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- stable-diffusion-diffusers |
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- controlnet |
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- endpoints-template |
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thumbnail: >- |
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https://huggingface.co./philschmid/ControlNet-endpoint/resolve/main/thumbnail.png |
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inference: true |
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duplicated_from: philschmid/ControlNet-endpoint |
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--- |
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# Inference Endpoint for [ControlNet](https://huggingface.co./lllyasviel/ControlNet) using [runwayml/stable-diffusion-v1-5](https://huggingface.co./runwayml/stable-diffusion-v1-5) |
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> ControlNet is a neural network structure to control diffusion models by adding extra conditions. |
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> Official repository: https://github.com/lllyasviel/ControlNet |
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--- |
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Blog post: [Controlled text to image generation with Inference Endpoints]() |
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This repository implements a custom `handler` task for `controlled text-to-image` generation on 🤗 Inference Endpoints. The code for the customized pipeline is in the [handler.py](https://huggingface.co./philschmid/ControlNet-endpoint/blob/main/handler.py). |
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There is also a [notebook](https://huggingface.co./philschmid/ControlNet-endpoint/blob/main/create_handler.ipynb) included, on how to create the `handler.py` |
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![sample](thumbnail.png) |
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### expected Request payload |
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```json |
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{ |
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"inputs": "A prompt used for image generation", |
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"negative_prompt": "low res, bad anatomy, worst quality, low quality", |
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"controlnet_type": "depth", |
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"image" : "iVBORw0KGgoAAAANSUhEUgAAAgAAAAIACAIAAAB7GkOtAAAABGdBTUEAALGPC", |
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} |
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``` |
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supported `controlnet_type` are: `canny_edge`, `pose`, `depth`, `scribble`, `segmentation`, `normal`, `hed`, `hough` |
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below is an example on how to run a request using Python and `requests`. |
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## Use Python to send requests |
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1. Get image |
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``` |
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wget https://huggingface.co./datasets/diffusers/test-arrays/resolve/main/stable_diffusion_imgvar/input_image_vermeer.png |
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``` |
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2. Use the following code to send a request to the endpoint |
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```python |
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import json |
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from typing import List |
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import requests as r |
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import base64 |
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from PIL import Image |
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from io import BytesIO |
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ENDPOINT_URL = "" # your endpoint url |
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HF_TOKEN = "" # your huggingface token `hf_xxx` |
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# helper image utils |
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def encode_image(image_path): |
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with open(image_path, "rb") as i: |
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b64 = base64.b64encode(i.read()) |
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return b64.decode("utf-8") |
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def predict(prompt, image, negative_prompt=None, controlnet_type = "normal"): |
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image = encode_image(image) |
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# prepare sample payload |
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request = {"inputs": prompt, "image": image, "negative_prompt": negative_prompt, "controlnet_type": controlnet_type} |
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# headers |
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headers = { |
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"Authorization": f"Bearer {HF_TOKEN}", |
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"Content-Type": "application/json", |
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"Accept": "image/png" # important to get an image back |
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} |
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response = r.post(ENDPOINT_URL, headers=headers, json=request) |
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if response.status_code != 200: |
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print(response.text) |
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raise Exception("Prediction failed") |
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img = Image.open(BytesIO(response.content)) |
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return img |
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prediction = predict( |
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prompt = "cloudy sky background lush landscape house and green trees, RAW photo (high detailed skin:1.2), 8k uhd, dslr, soft lighting, high quality, film grain, Fujifilm XT3", |
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negative_prompt ="lowres, bad anatomy, worst quality, low quality, city, traffic", |
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controlnet_type = "hed", |
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image = "huggingface.png" |
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) |
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prediction.save("result.png") |
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``` |
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``` |
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expected output |
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![sample](result.png) |
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[Adding Conditional Control to Text-to-Image Diffusion Models](https://arxiv.org/abs/2302.05543) by Lvmin Zhang and Maneesh Agrawala. |
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Using the pretrained models we can provide control images (for example, a depth map) to control Stable Diffusion text-to-image generation so that it follows the structure of the depth image and fills in the details. |
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The abstract of the paper is the following: |
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We present a neural network structure, ControlNet, to control pretrained large diffusion models to support additional input conditions. The ControlNet learns task-specific conditions in an end-to-end way, and the learning is robust even when the training dataset is small (< 50k). Moreover, training a ControlNet is as fast as fine-tuning a diffusion model, and the model can be trained on a personal devices. Alternatively, if powerful computation clusters are available, the model can scale to large amounts (millions to billions) of data. We report that large diffusion models like Stable Diffusion can be augmented with ControlNets to enable conditional inputs like edge maps, segmentation maps, keypoints, etc. This may enrich the methods to control large diffusion models and further facilitate related applications. |