This work presents a novel local image descriptor based on the concept of pointwise signal regularity. Local image regions are extracted using either an interest point or an interest region detector, and discriminative feature vectors are constructed by uniformly sampling the pointwise Holderian regularity around each region center. Regularity estimation is performed using local image oscillations, the most straightforward method directly derived from the definition of the Holder exponent. Furthermore, estimating the Holder exponent in this manner has proven to be superior when compared to wavelet based estimation. Our detector shows invariance to illumination change, JPEG compression, image rotation and scale change. Results show that the ...
The aim of this paper is to highlight the relevance in computer vision of the pointwise Lipschitz re...
We propose a denoising method that has the property of preserving local regularity, in the sense of ...
submittedWe propose a denoising method that has the property of preserving local regularity, in the ...
In this paper, we introduce a local image descriptor that is inspired by earlier detectors such as S...
We introduce a new method that characterizes quantitatively local image descriptors in terms of thei...
We propose a novel technique for detecting rotation- and scale-invariant interest points from the lo...
Local feature detection and local feature description have been frequently utilised as an integral s...
In this paper we compare the performance of descriptors computed for local interest regions, as for ...
We introduce a new method that characterizes typical local image features (e.g., SIFT, phase feature...
Stable local feature detection and representation is a fundamental component of many image registrat...
Local image features can provide the basis for robust and invariant recognition of objects and scene...
Abstract—A local image descriptor robust to the common photometric transformations (blur, illuminati...
Local features are widely utilized in a large number of applications, e.g., object categorization, i...
Abstract — As the popularity of digital videos increases, a large number illegal videos are being ge...
One of the most important tasks of modern computer vision with a vast amount of applications is fin...
The aim of this paper is to highlight the relevance in computer vision of the pointwise Lipschitz re...
We propose a denoising method that has the property of preserving local regularity, in the sense of ...
submittedWe propose a denoising method that has the property of preserving local regularity, in the ...
In this paper, we introduce a local image descriptor that is inspired by earlier detectors such as S...
We introduce a new method that characterizes quantitatively local image descriptors in terms of thei...
We propose a novel technique for detecting rotation- and scale-invariant interest points from the lo...
Local feature detection and local feature description have been frequently utilised as an integral s...
In this paper we compare the performance of descriptors computed for local interest regions, as for ...
We introduce a new method that characterizes typical local image features (e.g., SIFT, phase feature...
Stable local feature detection and representation is a fundamental component of many image registrat...
Local image features can provide the basis for robust and invariant recognition of objects and scene...
Abstract—A local image descriptor robust to the common photometric transformations (blur, illuminati...
Local features are widely utilized in a large number of applications, e.g., object categorization, i...
Abstract — As the popularity of digital videos increases, a large number illegal videos are being ge...
One of the most important tasks of modern computer vision with a vast amount of applications is fin...
The aim of this paper is to highlight the relevance in computer vision of the pointwise Lipschitz re...
We propose a denoising method that has the property of preserving local regularity, in the sense of ...
submittedWe propose a denoising method that has the property of preserving local regularity, in the ...