Omnidirectional images generally have nonlinear distortion in radial direction. Unfortunately, traditional algorithms such as scale-invariant feature transform (SIFT) and Descriptor-Nets (D-Nets) do not work well in matching omnidirectional images just because they are incapable of dealing with the distortion. In order to solve this problem, a new voting algorithm is proposed based on the spherical model and the D-Nets algorithm. Because the spherical-based keypoint descriptor contains the distortion information of omnidirectional images, the proposed matching algorithm is invariant to distortion. Keypoint matching experiments are performed on three pairs of omnidirectional images, and comparison is made among the proposed algorithm, the SI...
Two variants of the SIFT algorithm are presented which operate on calibrated central projection wide...
Keypoint matching is of fundamental importance in computer vision applications. Fish-eye lenses are ...
This paper proposes a new method for the selection of sets of omnidirectional views, which contribut...
A SIFT algorithm in spherical coordinates for omnidirectional images is proposed. This algorithm can...
We propose a method to compute scale invariant features in omnidirectional images. We present a form...
This paper proposed a method to detect object/scene through Scale Invariant Feature Transform (SIFT)...
We present a new descriptor and feature matching solution for omnidirectional images. The descriptor...
International audienceThis paper proposes a novel approach of line matching across images captured b...
AbstractThispaperproposed a methodtodetectobject/scenethroughScaleInvariantFeatureTransform(SIFT) ke...
Despite much research on patch-based descriptors, SIFT re-mains the gold standard for finding corres...
Abstract—Keypoint detection and matching is of fundamental impor-tance for many applications in comp...
Much attention is paid to registration of terrestrial point clouds nowadays. Research is carried out...
Much attention is paid to registration of terrestrial point clouds nowadays. Research is carried out...
Abstract — Image keypoints are broadly used in robotics for different purposes, ranging from recogni...
We propose a method to compute scale invariant features in omnidirectional images. We present a form...
Two variants of the SIFT algorithm are presented which operate on calibrated central projection wide...
Keypoint matching is of fundamental importance in computer vision applications. Fish-eye lenses are ...
This paper proposes a new method for the selection of sets of omnidirectional views, which contribut...
A SIFT algorithm in spherical coordinates for omnidirectional images is proposed. This algorithm can...
We propose a method to compute scale invariant features in omnidirectional images. We present a form...
This paper proposed a method to detect object/scene through Scale Invariant Feature Transform (SIFT)...
We present a new descriptor and feature matching solution for omnidirectional images. The descriptor...
International audienceThis paper proposes a novel approach of line matching across images captured b...
AbstractThispaperproposed a methodtodetectobject/scenethroughScaleInvariantFeatureTransform(SIFT) ke...
Despite much research on patch-based descriptors, SIFT re-mains the gold standard for finding corres...
Abstract—Keypoint detection and matching is of fundamental impor-tance for many applications in comp...
Much attention is paid to registration of terrestrial point clouds nowadays. Research is carried out...
Much attention is paid to registration of terrestrial point clouds nowadays. Research is carried out...
Abstract — Image keypoints are broadly used in robotics for different purposes, ranging from recogni...
We propose a method to compute scale invariant features in omnidirectional images. We present a form...
Two variants of the SIFT algorithm are presented which operate on calibrated central projection wide...
Keypoint matching is of fundamental importance in computer vision applications. Fish-eye lenses are ...
This paper proposes a new method for the selection of sets of omnidirectional views, which contribut...