Feature description and matching is an essential part of many computer vision applications. Numerous feature description algorithms have been developed to achieve reliable performance in image matching, e.g. SIFT, SURF, ORB, and BRISK. However, their descriptors usually fail when the images have undergone large viewpoint changes or shape deformation. To remedy the problem, we propose a novel feature description and similarity measure based on local neighborhoods. The proposed descriptor and similarity is useful for a wide range of matching methods including nearest neighbor matching methods and popular graph matching algorithms. Experimental results show that the proposed method detects reliable matches for image matching, and performs robu...
Image-feature matching based on Local Invariant Feature Extraction (LIFE) methods has proven to be s...
Matching of high-dimensional features using nearest neighbors search is an important part of image m...
Image-feature matching based on Local Invariant Feature Extraction (LIFE) methods has proven to be s...
Abstract—Feature detection and matching are essential parts in most computer vision applications. Ma...
ii Contemporary Computer Vision applications, such as visual search or 3D re-construction, need to h...
In order to solve the problem of low matching accuracy in the field of feature matching and point co...
Local image features around interest-points have been widely used in order to exploit the similariti...
Scene matching measures the similarity of scenes in photos and is of central importance in applicati...
This paper presents a geometrical-information-assisted approach for matching local features. With th...
Sets of local features that are invariant to common image transformations are an effective represent...
One of the most important tasks of modern computer vision with a vast amount of applications is fi...
One of the most important tasks of modern computer vision with a vast amount of applications is fin...
<p> Feature description and matching are at the base of many computer vision applications. However,...
Matching feature points from image pairs with significant visual changes and repetitive patterns rem...
Finding reliable and well distributed keypoint correspondences between images of non-static scenes i...
Image-feature matching based on Local Invariant Feature Extraction (LIFE) methods has proven to be s...
Matching of high-dimensional features using nearest neighbors search is an important part of image m...
Image-feature matching based on Local Invariant Feature Extraction (LIFE) methods has proven to be s...
Abstract—Feature detection and matching are essential parts in most computer vision applications. Ma...
ii Contemporary Computer Vision applications, such as visual search or 3D re-construction, need to h...
In order to solve the problem of low matching accuracy in the field of feature matching and point co...
Local image features around interest-points have been widely used in order to exploit the similariti...
Scene matching measures the similarity of scenes in photos and is of central importance in applicati...
This paper presents a geometrical-information-assisted approach for matching local features. With th...
Sets of local features that are invariant to common image transformations are an effective represent...
One of the most important tasks of modern computer vision with a vast amount of applications is fi...
One of the most important tasks of modern computer vision with a vast amount of applications is fin...
<p> Feature description and matching are at the base of many computer vision applications. However,...
Matching feature points from image pairs with significant visual changes and repetitive patterns rem...
Finding reliable and well distributed keypoint correspondences between images of non-static scenes i...
Image-feature matching based on Local Invariant Feature Extraction (LIFE) methods has proven to be s...
Matching of high-dimensional features using nearest neighbors search is an important part of image m...
Image-feature matching based on Local Invariant Feature Extraction (LIFE) methods has proven to be s...