Lightglue: Local feature matching at light speed
We introduce LightGlue, a deep neural network that learns to match local features across
images. We revisit multiple design decisions of SuperGlue, the state of the art in sparse …
images. We revisit multiple design decisions of SuperGlue, the state of the art in sparse …
Aspanformer: Detector-free image matching with adaptive span transformer
Generating robust and reliable correspondences across images is a fundamental task for a
diversity of applications. To capture context at both global and local granularity, we propose …
diversity of applications. To capture context at both global and local granularity, we propose …
Sc2-pcr: A second order spatial compatibility for efficient and robust point cloud registration
In this paper, we present a second order spatial compatibility (SC^ 2) measure based
method for efficient and robust point cloud registration (PCR), called SC^ 2-PCR. Firstly, we …
method for efficient and robust point cloud registration (PCR), called SC^ 2-PCR. Firstly, we …
Clustergnn: Cluster-based coarse-to-fine graph neural network for efficient feature matching
Abstract Graph Neural Networks (GNNs) with attention have been successfully applied for
learning visual feature matching. However, current methods learn with complete graphs …
learning visual feature matching. However, current methods learn with complete graphs …
Gluestick: Robust image matching by sticking points and lines together
Line segments are powerful features complementary to points. They offer structural cues,
robust to drastic viewpoint and illumination changes, and can be present even in texture …
robust to drastic viewpoint and illumination changes, and can be present even in texture …
SFD2: Semantic-guided feature detection and description
Visual localization is a fundamental task for various applications including autonomous
driving and robotics. Prior methods focus on extracting large amounts of often redundant …
driving and robotics. Prior methods focus on extracting large amounts of often redundant …
Detector-free structure from motion
We propose a structure-from-motion framework to recover accurate camera poses and point
clouds from unordered images. Traditional SfM systems typically rely on the successful …
clouds from unordered images. Traditional SfM systems typically rely on the successful …
Pats: Patch area transportation with subdivision for local feature matching
Local feature matching aims at establishing sparse correspondences between a pair of
images. Recently, detector-free methods present generally better performance but are not …
images. Recently, detector-free methods present generally better performance but are not …
Convmatch: Rethinking network design for two-view correspondence learning
Multilayer perceptron (MLP) has become the de facto backbone in two-view correspondence
learning, for it can extract effective deep features from unordered correspondences …
learning, for it can extract effective deep features from unordered correspondences …
Vitality: Unifying low-rank and sparse approximation for vision transformer acceleration with a linear taylor attention
Vision Transformer (ViT) has emerged as a competitive alternative to convolutional neural
networks for various computer vision applications. Specifically, ViTs' multi-head attention …
networks for various computer vision applications. Specifically, ViTs' multi-head attention …