Matching high dimensional features between images is computationally expensive for exhaustive search approaches in computer vision. Although the dimension of the feature can be degraded by simplifying the prior knowledge of homography, matching accuracy may degrade as a tradeoff. In this paper, we present a feature matching method based on k-means algorithm that reduces the matching cost and matches the features between images instead of using a simplified geometric assumption. Experimental results show that the proposed method outperforms the previous linear exhaustive search approaches in terms of the inlier ratio of matched pairs
Image matching is a fundamental aspect of many problems in computer vision, solving for 3D structur...
We present a robust feature matching approach that considers features from more than two images duri...
We present an efficient method for feature correspon-dence and object-based image matching, which ex...
Feature matching has been frequently applied in computer vision and pattern recognition. In this pap...
Matching of high-dimensional features using nearest neighbors search is an important part of image m...
[[abstract]]Feature descriptor matching plays an important role in many computer vision applications...
A probabilistic neural-network-based feature-matching algorithm for a stereo image pair is presented...
We proposes a method for fast matching SIFT feature points based on SIFT feature descriptor vector e...
Abstract. Many computer vision applications require computing structure and feature correspondence a...
This paper mainly expounds the basic issue three about the intelligent photogrammetry based on machi...
Abstract—Most of the content-based image retrieval systems require a distance computation for each c...
[[abstract]]Image keypoint descriptor matching is an important pre-processing task in various comput...
Features are distinctive landmarks of an image. There are various feature detection and description ...
The research on image matching method has been one of the main research focuses in recent years. In ...
The problem of feature matching comprises detection, description, and the preliminary matching of fe...
Image matching is a fundamental aspect of many problems in computer vision, solving for 3D structur...
We present a robust feature matching approach that considers features from more than two images duri...
We present an efficient method for feature correspon-dence and object-based image matching, which ex...
Feature matching has been frequently applied in computer vision and pattern recognition. In this pap...
Matching of high-dimensional features using nearest neighbors search is an important part of image m...
[[abstract]]Feature descriptor matching plays an important role in many computer vision applications...
A probabilistic neural-network-based feature-matching algorithm for a stereo image pair is presented...
We proposes a method for fast matching SIFT feature points based on SIFT feature descriptor vector e...
Abstract. Many computer vision applications require computing structure and feature correspondence a...
This paper mainly expounds the basic issue three about the intelligent photogrammetry based on machi...
Abstract—Most of the content-based image retrieval systems require a distance computation for each c...
[[abstract]]Image keypoint descriptor matching is an important pre-processing task in various comput...
Features are distinctive landmarks of an image. There are various feature detection and description ...
The research on image matching method has been one of the main research focuses in recent years. In ...
The problem of feature matching comprises detection, description, and the preliminary matching of fe...
Image matching is a fundamental aspect of many problems in computer vision, solving for 3D structur...
We present a robust feature matching approach that considers features from more than two images duri...
We present an efficient method for feature correspon-dence and object-based image matching, which ex...