Image-feature matching based on Local Invariant Feature Extraction (LIFE) methods has proven to be successful, and SIFT is one of the most effective. SIFT matching uses only local texture information to compute the correspondences. A number of approaches have been presented aimed at enhancing the image-features matches computed using only local information such as SIFT. What most of these approaches have in common is that they use a higher level information such as spatial arrangement of the feature points to reject a subset of outliers. The main limitation of the outlier rejectors is that they are not able to enhance the configuration of matches by adding new useful ones. In the present work we propose a graph matching algorithm aimed not ...
descriptors, and they have shown that the SIFTpack representation saves not only storage space, but ...
Image registration has received great attention from researchers over the last few decades. SIFT (Sc...
Feature description and matching is an essential part of many computer vision applications. Numerous...
Image-feature matching based on Local Invariant Feature Extraction (LIFE) methods has proven to be s...
Image-features matching based on SIFT descriptors is subject to the misplacement of certain matches ...
Image-features matching based on SIFT descriptors is subject to the misplacement of certain matches ...
Local invariant feature extraction methods are widely used for image-features matching. There exist ...
Abstract. Image-features matching based on SIFT descriptors is sub-ject to the misplacement of certa...
Feature point matching aims to automatically establish point-to-point correspondences between two im...
Abstract. A new algorithm of feature matching was presented by this paper. In the new algorithm, Cur...
Abstract—Feature detection and matching are essential parts in most computer vision applications. Ma...
is an approach for extracting distinctive invariant features from images. It has been successfully a...
This paper investigates how to step up local image descriptor matching by exploiting matching contex...
This paper presents an algorithm that extracts robust feature descriptors from 2.5D range images, in...
We present a two-stage, geometry-aware approach for matching SIFT-like features in a fast and reliab...
descriptors, and they have shown that the SIFTpack representation saves not only storage space, but ...
Image registration has received great attention from researchers over the last few decades. SIFT (Sc...
Feature description and matching is an essential part of many computer vision applications. Numerous...
Image-feature matching based on Local Invariant Feature Extraction (LIFE) methods has proven to be s...
Image-features matching based on SIFT descriptors is subject to the misplacement of certain matches ...
Image-features matching based on SIFT descriptors is subject to the misplacement of certain matches ...
Local invariant feature extraction methods are widely used for image-features matching. There exist ...
Abstract. Image-features matching based on SIFT descriptors is sub-ject to the misplacement of certa...
Feature point matching aims to automatically establish point-to-point correspondences between two im...
Abstract. A new algorithm of feature matching was presented by this paper. In the new algorithm, Cur...
Abstract—Feature detection and matching are essential parts in most computer vision applications. Ma...
is an approach for extracting distinctive invariant features from images. It has been successfully a...
This paper investigates how to step up local image descriptor matching by exploiting matching contex...
This paper presents an algorithm that extracts robust feature descriptors from 2.5D range images, in...
We present a two-stage, geometry-aware approach for matching SIFT-like features in a fast and reliab...
descriptors, and they have shown that the SIFTpack representation saves not only storage space, but ...
Image registration has received great attention from researchers over the last few decades. SIFT (Sc...
Feature description and matching is an essential part of many computer vision applications. Numerous...