This note is devoted to a mathematical exploration of whether Lowe’s Scale-Invariant Fea-ture Transform (SIFT) [21], a very successful image matching method, is similarity invariant as claimed. It is proved that the method is scale invariant only if the initial image blurs is exactly guessed. Yet, even a large error on the initial blur is quickly attenuated by this multiscale method, when the scale of analysis increases. In consequence, its scale invariance is almost perfect. The mathematical arguments are given under the assumption that the Gaus-sian smoothing performed by SIFT gives an aliasing free sampling of the image evolution. The validity of this main assumption is confirmed by a rigorous experimental procedure, and by a mathematica...
Exactly extracting the stable feature of high resolution SAR image as well as matching it are two cr...
The SIFT (scale invariant feature transform) has demonstrated its superior performance in identifyin...
Abstract—A number of computer vision and image processing algorithms rely on image features, and com...
(Communicated by Professor Otmar Scherzer) Abstract. This note is devoted to a mathematical explorat...
The most popular image matching algorithm SIFT, introduced by D. Lowe a decade ago, has proven to be...
This article presents a detailed description and implementation of the Scale Invariant FeatureTransf...
International audienceMatching precision of scale-invariant feature transform (SIFT) is evaluated an...
This dissertation contributes to an in-depth analysis of the SIFT method. SIFT is the most popular a...
Gaussian convolution is one of the most important algorithms in image processing. The present work f...
There is a great deal of systems dealing with image processing that are being used and developed on ...
SIFT is an image local feature description algorithm based on scale-space. Due to its strong matchin...
In this paper we propose a novel feature based on SIFT (Scale Invariant Feature Transform) algorithm...
In this paper we present a face recognition system based on the Scale Invariant Feature Transform (S...
First version of the report in 2007. Final updated version in 2010.SIFT (Scale Invariant Feature Tra...
The research on image matching method has been one of the main research focuses in recent years. In ...
Exactly extracting the stable feature of high resolution SAR image as well as matching it are two cr...
The SIFT (scale invariant feature transform) has demonstrated its superior performance in identifyin...
Abstract—A number of computer vision and image processing algorithms rely on image features, and com...
(Communicated by Professor Otmar Scherzer) Abstract. This note is devoted to a mathematical explorat...
The most popular image matching algorithm SIFT, introduced by D. Lowe a decade ago, has proven to be...
This article presents a detailed description and implementation of the Scale Invariant FeatureTransf...
International audienceMatching precision of scale-invariant feature transform (SIFT) is evaluated an...
This dissertation contributes to an in-depth analysis of the SIFT method. SIFT is the most popular a...
Gaussian convolution is one of the most important algorithms in image processing. The present work f...
There is a great deal of systems dealing with image processing that are being used and developed on ...
SIFT is an image local feature description algorithm based on scale-space. Due to its strong matchin...
In this paper we propose a novel feature based on SIFT (Scale Invariant Feature Transform) algorithm...
In this paper we present a face recognition system based on the Scale Invariant Feature Transform (S...
First version of the report in 2007. Final updated version in 2010.SIFT (Scale Invariant Feature Tra...
The research on image matching method has been one of the main research focuses in recent years. In ...
Exactly extracting the stable feature of high resolution SAR image as well as matching it are two cr...
The SIFT (scale invariant feature transform) has demonstrated its superior performance in identifyin...
Abstract—A number of computer vision and image processing algorithms rely on image features, and com...