<p> Point matching under illumination changes is significant for many vision information applications. However, the uneven and dramatic illumination variations model is rarely considered in existing point matching algorithms. Therefore, a method to match features efficiently under uneven and dramatic illumination changes is presented. This method extracts and describes illumination invariant interesting points from matched multibrightness layers that are obtained by a set of contrast stretching functions and prior information based on original images. Layers matching is insensitive to large unevenness of illumination changes and provides similar images in brightness and structure, so the effects of large uneven illumination changes can be ...
Abstract The author studied the feature point extraction and matching based on BRISK and ORB algorit...
[[abstract]]Face matching is essential step for face recognition and face verification. It is diffi...
Feature detection and matching is one of the fundamental problems in low-level computer vision. Give...
In this paper, the challenges in local-feature-based image matching are variations of view and illum...
Abstract—The challenges in local-feature-based image matching are variations of view and illuminatio...
In recent years, interest point based feature such as SIFT and SURF are widely used for image matchi...
Features are distinctive landmarks of an image. There are various feature detection and description ...
Generally, extracting keypoint descriptors andfeature matching are the steps that are used to detec...
AbstractImage matching is one of the keystones of computer vision. Feature point matching is the mos...
We present a robust feature matching approach that considers features from more than two images duri...
We present a novel type of feature that is robust to challenging images that are mainly due to large...
Most existing feature-point matching algorithms rely on photometric region descriptors to distinct a...
Most existing feature-matching methods utilize texture correlation for feature matching, which is us...
Most existing feature-matching methods utilize texture correlation for feature matching, which is us...
Reliably matching feature points is an important part of many computer vision applications. This tas...
Abstract The author studied the feature point extraction and matching based on BRISK and ORB algorit...
[[abstract]]Face matching is essential step for face recognition and face verification. It is diffi...
Feature detection and matching is one of the fundamental problems in low-level computer vision. Give...
In this paper, the challenges in local-feature-based image matching are variations of view and illum...
Abstract—The challenges in local-feature-based image matching are variations of view and illuminatio...
In recent years, interest point based feature such as SIFT and SURF are widely used for image matchi...
Features are distinctive landmarks of an image. There are various feature detection and description ...
Generally, extracting keypoint descriptors andfeature matching are the steps that are used to detec...
AbstractImage matching is one of the keystones of computer vision. Feature point matching is the mos...
We present a robust feature matching approach that considers features from more than two images duri...
We present a novel type of feature that is robust to challenging images that are mainly due to large...
Most existing feature-point matching algorithms rely on photometric region descriptors to distinct a...
Most existing feature-matching methods utilize texture correlation for feature matching, which is us...
Most existing feature-matching methods utilize texture correlation for feature matching, which is us...
Reliably matching feature points is an important part of many computer vision applications. This tas...
Abstract The author studied the feature point extraction and matching based on BRISK and ORB algorit...
[[abstract]]Face matching is essential step for face recognition and face verification. It is diffi...
Feature detection and matching is one of the fundamental problems in low-level computer vision. Give...