LightGlue
This model was released on 2023-06-23 and added to Hugging Face Transformers on 2025-06-17.
LightGlue
Section titled “LightGlue”LightGlue is a deep neural network that learns to match local features across images. It revisits multiple design decisions of SuperGlue and derives simple but effective improvements. Cumulatively, these improvements make LightGlue more efficient - in terms of both memory and computation, more accurate, and much easier to train. Similar to SuperGlue, this model consists of matching two sets of local features extracted from two images, with the goal of being faster than SuperGlue. Paired with the SuperPoint model, it can be used to match two images and estimate the pose between them.
You can find all the original LightGlue checkpoints under the ETH-CVG organization.
Click on the LightGlue models in the right sidebar for more examples of how to apply LightGlue to different computer vision tasks.
The example below demonstrates how to match keypoints between two images with Pipeline or the AutoModel class.
from transformers import pipeline
keypoint_matcher = pipeline(task="keypoint-matching", model="ETH-CVG/lightglue_superpoint")
url_0 = "https://raw.githubusercontent.com/magicleap/SuperGluePretrainedNetwork/refs/heads/master/assets/phototourism_sample_images/united_states_capitol_98169888_3347710852.jpg"url_1 = "https://raw.githubusercontent.com/magicleap/SuperGluePretrainedNetwork/refs/heads/master/assets/phototourism_sample_images/united_states_capitol_26757027_6717084061.jpg"
results = keypoint_matcher([url_0, url_1], threshold=0.9)print(results[0])# {'keypoint_image_0': {'x': ..., 'y': ...}, 'keypoint_image_1': {'x': ..., 'y': ...}, 'score': ...}from transformers import AutoImageProcessor, AutoModelimport torchfrom PIL import Imageimport requests
url_image1 = "https://raw.githubusercontent.com/magicleap/SuperGluePretrainedNetwork/refs/heads/master/assets/phototourism_sample_images/united_states_capitol_98169888_3347710852.jpg"image1 = Image.open(requests.get(url_image1, stream=True).raw)url_image2 = "https://raw.githubusercontent.com/magicleap/SuperGluePretrainedNetwork/refs/heads/master/assets/phototourism_sample_images/united_states_capitol_26757027_6717084061.jpg"image2 = Image.open(requests.get(url_image2, stream=True).raw)
images = [image1, image2]
processor = AutoImageProcessor.from_pretrained("ETH-CVG/lightglue_superpoint")model = AutoModel.from_pretrained("ETH-CVG/lightglue_superpoint")
inputs = processor(images, return_tensors="pt")with torch.inference_mode(): outputs = model(**inputs)
# Post-process to get keypoints and matchesimage_sizes = [[(image.height, image.width) for image in images]]processed_outputs = processor.post_process_keypoint_matching(outputs, image_sizes, threshold=0.2)-
LightGlue is adaptive to the task difficulty. Inference is much faster on image pairs that are intuitively easy to match, for example, because of a larger visual overlap or limited appearance change.
from transformers import AutoImageProcessor, AutoModelimport torchfrom PIL import Imageimport requestsprocessor = AutoImageProcessor.from_pretrained("ETH-CVG/lightglue_superpoint")model = AutoModel.from_pretrained("ETH-CVG/lightglue_superpoint")# LightGlue requires pairs of imagesimages = [image1, image2]inputs = processor(images, return_tensors="pt")with torch.inference_mode():outputs = model(**inputs)# Extract matching informationkeypoints0 = outputs.keypoints0 # Keypoints in first imagekeypoints1 = outputs.keypoints1 # Keypoints in second imagematches = outputs.matches # Matching indicesmatching_scores = outputs.matching_scores # Confidence scores -
The model outputs matching indices, keypoints, and confidence scores for each match, similar to SuperGlue but with improved efficiency.
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For better visualization and analysis, use the
post_process_keypoint_matchingmethod to get matches in a more readable format.# Process outputs for visualizationimage_sizes = [[(image.height, image.width) for image in images]]processed_outputs = processor.post_process_keypoint_matching(outputs, image_sizes, threshold=0.2)for i, output in enumerate(processed_outputs):print(f"For the image pair {i}")for keypoint0, keypoint1, matching_score in zip(output["keypoints0"], output["keypoints1"], output["matching_scores"]):print(f"Keypoint at {keypoint0.numpy()} matches with keypoint at {keypoint1.numpy()} with score {matching_score}") -
Visualize the matches between the images using the built-in plotting functionality.
# Easy visualization using the built-in plotting methodprocessor.visualize_keypoint_matching(images, processed_outputs)
Resources
Section titled “Resources”- Refer to the original LightGlue repository for more examples and implementation details.
LightGlueConfig
Section titled “LightGlueConfig”[[autodoc]] LightGlueConfig
LightGlueImageProcessor
Section titled “LightGlueImageProcessor”[[autodoc]] LightGlueImageProcessor - preprocess - post_process_keypoint_matching - visualize_keypoint_matching
LightGlueImageProcessorFast
Section titled “LightGlueImageProcessorFast”[[autodoc]] LightGlueImageProcessorFast - preprocess - post_process_keypoint_matching - visualize_keypoint_matching
LightGlueForKeypointMatching
Section titled “LightGlueForKeypointMatching”[[autodoc]] LightGlueForKeypointMatching - forward