# Image-to-Image Task Guide [[open-in-colab]] Image-to-Image task is the task where an application receives an image and outputs another image. This has various subtasks, including image enhancement (super resolution, low light enhancement, deraining and so on), image inpainting, and more. This guide will show you how to: - Use an image-to-image pipeline for super resolution task, - Run image-to-image models for same task without a pipeline. Note that as of the time this guide is released, `image-to-image` pipeline only supports super resolution task. Let's begin by installing the necessary libraries. ```bash pip install transformers ``` We can now initialize the pipeline with a [Swin2SR model](https://huggingface.co/caidas/swin2SR-lightweight-x2-64). We can then infer with the pipeline by calling it with an image. As of now, only [Swin2SR models](https://huggingface.co/models?sort=trending&search=swin2sr) are supported in this pipeline. ```python from transformers import pipeline import torch from accelerate.test_utils.testing import get_backend # automatically detects the underlying device type (CUDA, CPU, XPU, MPS, etc.) device, _, _ = get_backend() pipe = pipeline(task="image-to-image", model="caidas/swin2SR-lightweight-x2-64", device=device) ``` Now, let's load an image. ```python from PIL import Image import requests url = "https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/transformers/tasks/cat.jpg" image = Image.open(requests.get(url, stream=True).raw) print(image.size) ``` ```bash # (532, 432) ```
Photo of a cat
We can now do inference with the pipeline. We will get an upscaled version of the cat image. ```python upscaled = pipe(image) print(upscaled.size) ``` ```bash # (1072, 880) ``` If you wish to do inference yourself with no pipeline, you can use the `Swin2SRForImageSuperResolution` and `Swin2SRImageProcessor` classes of transformers. We will use the same model checkpoint for this. Let's initialize the model and the processor. ```python from transformers import Swin2SRForImageSuperResolution, Swin2SRImageProcessor model = Swin2SRForImageSuperResolution.from_pretrained("caidas/swin2SR-lightweight-x2-64").to(device) processor = Swin2SRImageProcessor("caidas/swin2SR-lightweight-x2-64") ``` `pipeline` abstracts away the preprocessing and postprocessing steps that we have to do ourselves, so let's preprocess the image. We will pass the image to the processor and then move the pixel values to GPU. ```python pixel_values = processor(image, return_tensors="pt").pixel_values print(pixel_values.shape) pixel_values = pixel_values.to(device) ``` We can now infer the image by passing pixel values to the model. ```python import torch with torch.no_grad(): outputs = model(pixel_values) ``` Output is an object of type `ImageSuperResolutionOutput` that looks like below 👇 ``` (loss=None, reconstruction=tensor([[[[0.8270, 0.8269, 0.8275, ..., 0.7463, 0.7446, 0.7453], [0.8287, 0.8278, 0.8283, ..., 0.7451, 0.7448, 0.7457], [0.8280, 0.8273, 0.8269, ..., 0.7447, 0.7446, 0.7452], ..., [0.5923, 0.5933, 0.5924, ..., 0.0697, 0.0695, 0.0706], [0.5926, 0.5932, 0.5926, ..., 0.0673, 0.0687, 0.0705], [0.5927, 0.5914, 0.5922, ..., 0.0664, 0.0694, 0.0718]]]], device='cuda:0'), hidden_states=None, attentions=None) ``` We need to get the `reconstruction` and post-process it for visualization. Let's see how it looks like. ```python outputs.reconstruction.data.shape # torch.Size([1, 3, 880, 1072]) ``` We need to squeeze the output and get rid of axis 0, clip the values, then convert it to be numpy float. Then we will arrange axes to have the shape [1072, 880], and finally, bring the output back to range [0, 255]. ```python import numpy as np # squeeze, take to CPU and clip the values output = outputs.reconstruction.data.squeeze().cpu().clamp_(0, 1).numpy() # rearrange the axes output = np.moveaxis(output, source=0, destination=-1) # bring values back to pixel values range output = (output * 255.0).round().astype(np.uint8) Image.fromarray(output) ```
Upscaled photo of a cat