| | --- |
| | tags: |
| | - vision |
| | - image-matching |
| | inference: false |
| | --- |
| | |
| |
|
| | # SuperPoint |
| |
|
| | ## Overview |
| |
|
| | The SuperPoint model was proposed |
| | in [SuperPoint: Self-Supervised Interest Point Detection and Description](https://arxiv.org/abs/1712.07629) by Daniel |
| | DeTone, Tomasz Malisiewicz and Andrew Rabinovich. |
| |
|
| | This model is the result of a self-supervised training of a fully-convolutional network for interest point detection and |
| | description. The model is able to detect interest points that are repeatable under homographic transformations and |
| | provide a descriptor for each point. The use of the model in its own is limited, but it can be used as a feature |
| | extractor for other tasks such as homography estimation, image matching, etc. |
| |
|
| | The abstract from the paper is the following: |
| |
|
| | *This paper presents a self-supervised framework for training interest point detectors and descriptors suitable for a |
| | large number of multiple-view geometry problems in computer vision. As opposed to patch-based neural networks, our |
| | fully-convolutional model operates on full-sized images and jointly computes pixel-level interest point locations and |
| | associated descriptors in one forward pass. We introduce Homographic Adaptation, a multi-scale, multi-homography |
| | approach for boosting interest point detection repeatability and performing cross-domain adaptation (e.g., |
| | synthetic-to-real). Our model, when trained on the MS-COCO generic image dataset using Homographic Adaptation, is able |
| | to repeatedly detect a much richer set of interest points than the initial pre-adapted deep model and any other |
| | traditional corner detector. The final system gives rise to state-of-the-art homography estimation results on HPatches |
| | when compared to LIFT, SIFT and ORB.* |
| |
|
| | ## Demo notebook |
| |
|
| | A demo notebook showcasing inference + visualization with SuperPoint can be found [here](https://github.com/NielsRogge/Transformers-Tutorials/blob/master/SuperPoint/Inference_with_SuperPoint_to_detect_interest_points_in_an_image.ipynb). |
| |
|
| | ## How to use |
| |
|
| | Here is a quick example of using the model to detect interest points in an image: |
| |
|
| | ```python |
| | from transformers import AutoImageProcessor, SuperPointForKeypointDetection |
| | import torch |
| | from PIL import Image |
| | import requests |
| | |
| | url = "http://images.cocodataset.org/val2017/000000039769.jpg" |
| | image = Image.open(requests.get(url, stream=True).raw) |
| | |
| | processor = AutoImageProcessor.from_pretrained("magic-leap-community/superpoint") |
| | model = SuperPointForKeypointDetection.from_pretrained("magic-leap-community/superpoint") |
| | |
| | inputs = processor(image, return_tensors="pt") |
| | outputs = model(**inputs) |
| | ``` |
| |
|
| | The outputs contain the list of keypoint coordinates with their respective score and description (a 256-long vector). |
| |
|
| | You can also feed multiple images to the model. Due to the nature of SuperPoint, to output a dynamic number of keypoints, |
| | you will need to use the mask attribute to retrieve the respective information : |
| |
|
| | ```python |
| | from transformers import AutoImageProcessor, SuperPointForKeypointDetection |
| | import torch |
| | from PIL import Image |
| | import requests |
| | |
| | url_image_1 = "http://images.cocodataset.org/val2017/000000039769.jpg" |
| | image_1 = Image.open(requests.get(url_image_1, stream=True).raw) |
| | url_image_2 = "http://images.cocodataset.org/test-stuff2017/000000000568.jpg" |
| | image_2 = Image.open(requests.get(url_image_2, stream=True).raw) |
| | |
| | images = [image_1, image_2] |
| | |
| | processor = AutoImageProcessor.from_pretrained("magic-leap-community/superpoint") |
| | model = SuperPointForKeypointDetection.from_pretrained("magic-leap-community/superpoint") |
| | |
| | inputs = processor(images, return_tensors="pt") |
| | outputs = model(**inputs) |
| | ``` |
| |
|
| | We can now visualize the keypoints. |
| |
|
| | ``` |
| | import matplotlib.pyplot as plt |
| | import torch |
| | |
| | for i in range(len(images)): |
| | image = images[i] |
| | image_width, image_height = image.size |
| | |
| | image_mask = outputs.mask[i] |
| | image_indices = torch.nonzero(image_mask).squeeze() |
| | |
| | image_scores = outputs.scores[i][image_indices] |
| | image_keypoints = outputs.keypoints[i][image_indices] |
| | |
| | keypoints = image_keypoints.detach().numpy() |
| | scores = image_scores.detach().numpy() |
| | |
| | valid_keypoints = [ |
| | (kp, score) for kp, score in zip(keypoints, scores) |
| | if 0 <= kp[0] < image_width and 0 <= kp[1] < image_height |
| | ] |
| | |
| | valid_keypoints, valid_scores = zip(*valid_keypoints) |
| | valid_keypoints = torch.tensor(valid_keypoints) |
| | valid_scores = torch.tensor(valid_scores) |
| | |
| | print(valid_keypoints.shape) |
| | |
| | plt.axis('off') |
| | plt.imshow(image) |
| | plt.scatter( |
| | valid_keypoints[:, 0], |
| | valid_keypoints[:, 1], |
| | s=valid_scores * 100, |
| | c='red' |
| | ) |
| | plt.show() |
| | ``` |
| |
|
| | This model was contributed by [stevenbucaille](https://huggingface.co/stevenbucaille). |
| | The original code can be found [here](https://github.com/magicleap/SuperPointPretrainedNetwork). |
| |
|
| | ```bibtex |
| | @inproceedings{detone2018superpoint, |
| | title={Superpoint: Self-supervised interest point detection and description}, |
| | author={DeTone, Daniel and Malisiewicz, Tomasz and Rabinovich, Andrew}, |
| | booktitle={Proceedings of the IEEE conference on computer vision and pattern recognition workshops}, |
| | pages={224--236}, |
| | year={2018} |
| | } |
| | ``` |