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Superglue Outdoor

Developed by magic-leap-community
SuperGlue is a graph neural network-based feature matching model for matching interest points in images, suitable for image matching and pose estimation tasks.
Downloads 18.39k
Release Time : 11/17/2024

Model Overview

SuperGlue matches two sets of local features by jointly finding correspondences and rejecting non-matchable points, applicable to multi-view geometry problems and capable of handling challenges in real indoor and outdoor environments.

Model Features

Graph Neural Network-based Matching
Uses attention graph neural networks and optimal matching layers for efficient feature matching.
End-to-End Training
Learns geometric transformations and 3D world regularity priors through end-to-end image pair training.
Real-Time Performance
Runs in real-time on modern GPUs, suitable for integration into modern SfM or SLAM systems.

Model Capabilities

Image matching
Pose estimation
Homography estimation

Use Cases

Computer Vision
Image Matching
Matches interest points in two images for image alignment or stitching.
Achieves state-of-the-art performance in pose estimation tasks in real indoor and outdoor environments.
SLAM System Integration
Integrated into SLAM systems for real-time scene reconstruction and localization.
Suitable for modern SfM or SLAM systems.
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