Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

IEEE Transaction on Pattern Analysis and Machine Intelligence

View through Europeana Collections
We suggest a set of complex differential operators that can be used to produce and filter dense orientation (tensor) fields for feature extraction, matching, and pattern recognition. We present results on the invariance properties of these operators, that we call symmetry derivatives. These show that, in contrast to ordinary derivatives, all orders of symmetry derivatives of Gaussians yield a remarkable invariance: they are obtained by replacing the original differential polynomial with the same polynomial, but using ordinary coordinates x and y corresponding to partial derivatives. Moreover, the symmetry derivatives of Gaussians are closed under the convolution operator and they are invariant to the Fourier transform. The equivalent of the structure tensor, representing and extracting orientations of curve patterns, had previously been shown to hold in harmonic coordinates in a nearly identical manner. As a result, positions, orientations, and certainties of intricate patterns, e.g., spirals, crosses, parabolic shapes, can be modeled by use of symmetry derivatives of Gaussians with greater analytical precision as well as computational efficiency. Since Gaussians and their derivatives are utilized extensively in image processing, the revealed properties have practical consequences for local orientation based feature extraction. The usefulness of these results is demonstrated by two applications:tracking cross markers in long image sequences from vehicle crash tests andalignment of noisy fingerprints.
Title: IEEE Transaction on Pattern Analysis and Machine Intelligence
Description:
We suggest a set of complex differential operators that can be used to produce and filter dense orientation (tensor) fields for feature extraction, matching, and pattern recognition.
We present results on the invariance properties of these operators, that we call symmetry derivatives.
These show that, in contrast to ordinary derivatives, all orders of symmetry derivatives of Gaussians yield a remarkable invariance: they are obtained by replacing the original differential polynomial with the same polynomial, but using ordinary coordinates x and y corresponding to partial derivatives.
Moreover, the symmetry derivatives of Gaussians are closed under the convolution operator and they are invariant to the Fourier transform.
The equivalent of the structure tensor, representing and extracting orientations of curve patterns, had previously been shown to hold in harmonic coordinates in a nearly identical manner.
As a result, positions, orientations, and certainties of intricate patterns, e.
g.
, spirals, crosses, parabolic shapes, can be modeled by use of symmetry derivatives of Gaussians with greater analytical precision as well as computational efficiency.
Since Gaussians and their derivatives are utilized extensively in image processing, the revealed properties have practical consequences for local orientation based feature extraction.
The usefulness of these results is demonstrated by two applications:tracking cross markers in long image sequences from vehicle crash tests andalignment of noisy fingerprints.

Related Results

Philosophic sur ordinateur ou intelligence artificielle
Philosophic sur ordinateur ou intelligence artificielle
L'informatique se définissant comme le traitement rationnel de l'information par machine automatique et l'intelligence se caractérisant par une même capacité de traitement rationne...
A Comparative Study of Some Selected Classifiers on an Imbalanced Dataset for Sentiment Analysis
A Comparative Study of Some Selected Classifiers on an Imbalanced Dataset for Sentiment Analysis
Extracting subjective data from online user generated text documents is made quite easy with the use of sentiment analysis. For a classification task different individual algorithm...
Becoming-Flashdrive: The Cinematic Intelligence of Lucy
Becoming-Flashdrive: The Cinematic Intelligence of Lucy
An important but easily forgotten moment in the history of film-philosophy is Jean Epstein's assertion that cinema, more than merely thinking, has a kind of intelligence. If it is ...
The Missing Link in Royalty Analysis: An Essay on Resolving Value-Based Royalty Disputes
The Missing Link in Royalty Analysis: An Essay on Resolving Value-Based Royalty Disputes
The oil and gas lease is intended to document a business transaction between the landowner and oil and gas developer. The developer obtains the right to enter the landowner's prope...
Lucas against Mechanism
Lucas against Mechanism
J. R. Lucas argues in “Minds, Machines, and Gödel”, that his potential output of truths of arithmetic cannot be duplicated by any Turing machine, and a fortiori cannot be duplicate...
Neutrosophic Hybrid Machine Learning Algorithm for Diabetes Disease Prediction
Neutrosophic Hybrid Machine Learning Algorithm for Diabetes Disease Prediction
Because of its far-reaching effects, diabetes remains a major health problem on a worldwide scale. It's a metabolic illness that causes hyperglycemia and a host of other health iss...
Sentiment Analysis Using Machine Learning Approaches (Lexicon based on movie review dataset)
Sentiment Analysis Using Machine Learning Approaches (Lexicon based on movie review dataset)
Sentiment analysis or Opinion Mining or Emotion Artificial Intelligence is an on-going field which refers to the use of Natural Language Processing, analysis of text and is utiliz...

Back to Top