Detection and Localization of Random Signals

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Detection and Localization of Random Signals. / Sporring, Jon; Olsen, Niels Holm; Nielsen, Mads.

Scale Space Methods in Computer Vision: 4th International Conference, Scale Space 2003 Isle of Skye, UK, June 10–12, 2003 Proceedings. 2003. s. 785-797 (Lecture notes in computer science, Bind 2695/2003).

Publikation: Bidrag til bog/antologi/rapportKonferencebidrag i proceedingsForskningfagfællebedømt

Harvard

Sporring, J, Olsen, NH & Nielsen, M 2003, Detection and Localization of Random Signals. i Scale Space Methods in Computer Vision: 4th International Conference, Scale Space 2003 Isle of Skye, UK, June 10–12, 2003 Proceedings. Lecture notes in computer science, bind 2695/2003, s. 785-797, 4th International Conference in Scale Space, Isle of Skye, Storbritannien, 29/11/2010. https://doi.org/10.1007/3-540-44935-3_55

APA

Sporring, J., Olsen, N. H., & Nielsen, M. (2003). Detection and Localization of Random Signals. I Scale Space Methods in Computer Vision: 4th International Conference, Scale Space 2003 Isle of Skye, UK, June 10–12, 2003 Proceedings (s. 785-797). Lecture notes in computer science Bind 2695/2003 https://doi.org/10.1007/3-540-44935-3_55

Vancouver

Sporring J, Olsen NH, Nielsen M. Detection and Localization of Random Signals. I Scale Space Methods in Computer Vision: 4th International Conference, Scale Space 2003 Isle of Skye, UK, June 10–12, 2003 Proceedings. 2003. s. 785-797. (Lecture notes in computer science, Bind 2695/2003). https://doi.org/10.1007/3-540-44935-3_55

Author

Sporring, Jon ; Olsen, Niels Holm ; Nielsen, Mads. / Detection and Localization of Random Signals. Scale Space Methods in Computer Vision: 4th International Conference, Scale Space 2003 Isle of Skye, UK, June 10–12, 2003 Proceedings. 2003. s. 785-797 (Lecture notes in computer science, Bind 2695/2003).

Bibtex

@inproceedings{fcb61fd06de711dd8d9f000ea68e967b,
title = "Detection and Localization of Random Signals",
abstract = "Object detection and localization are common tasks in image analysis. Correlation based detection algorithms are known to work well, when dealing with objects with known geometry in Gaussianly distributed additive noise. In the Bayes{\textquoteright} view, correlation is linearly related to the logarithm of the probability density, and optimal object detection is obtained by the integral of the exponentiated squared correlation under appropriate normalization. Correlation with a model is linear in the input image, and can be computed effectively for all possible positions of the model using Fourier based linear filtering techniques. It is therefore interesting to extend the application to objects with many but small degrees of freedom in their geometry. These geometric variations deteriorate the linear correlation signal, both regarding its strength and localization with multiple peaks from a single object. Localization is typically preferred over detection, and Bayesian localization may be obtained as local integration of the probability density. In this work, Gaussian kernels of the exponentiated correlation are studied, and the use of Linear Scale-Space allows us to extend the Bayes detection with a well-posed localization, to extend the usage of correlation to a larger class of shapes, and to argue for the use of mathematical morphology with quadratic structuring elements on correlation images. This project is supported in part by the Danish Research Agency, project “Computing Natural Shape”, no. 2051-01-0008 and in part by the DSSCV project under the IST Programme of the European Union (IST-2001-35443)",
author = "Jon Sporring and Olsen, {Niels Holm} and Mads Nielsen",
year = "2003",
doi = "10.1007/3-540-44935-3_55",
language = "English",
series = "Lecture notes in computer science",
publisher = "Springer",
pages = "785--797",
booktitle = "Scale Space Methods in Computer Vision",
note = "null ; Conference date: 29-11-2010",

}

RIS

TY - GEN

T1 - Detection and Localization of Random Signals

AU - Sporring, Jon

AU - Olsen, Niels Holm

AU - Nielsen, Mads

N1 - Conference code: 4

PY - 2003

Y1 - 2003

N2 - Object detection and localization are common tasks in image analysis. Correlation based detection algorithms are known to work well, when dealing with objects with known geometry in Gaussianly distributed additive noise. In the Bayes’ view, correlation is linearly related to the logarithm of the probability density, and optimal object detection is obtained by the integral of the exponentiated squared correlation under appropriate normalization. Correlation with a model is linear in the input image, and can be computed effectively for all possible positions of the model using Fourier based linear filtering techniques. It is therefore interesting to extend the application to objects with many but small degrees of freedom in their geometry. These geometric variations deteriorate the linear correlation signal, both regarding its strength and localization with multiple peaks from a single object. Localization is typically preferred over detection, and Bayesian localization may be obtained as local integration of the probability density. In this work, Gaussian kernels of the exponentiated correlation are studied, and the use of Linear Scale-Space allows us to extend the Bayes detection with a well-posed localization, to extend the usage of correlation to a larger class of shapes, and to argue for the use of mathematical morphology with quadratic structuring elements on correlation images. This project is supported in part by the Danish Research Agency, project “Computing Natural Shape”, no. 2051-01-0008 and in part by the DSSCV project under the IST Programme of the European Union (IST-2001-35443)

AB - Object detection and localization are common tasks in image analysis. Correlation based detection algorithms are known to work well, when dealing with objects with known geometry in Gaussianly distributed additive noise. In the Bayes’ view, correlation is linearly related to the logarithm of the probability density, and optimal object detection is obtained by the integral of the exponentiated squared correlation under appropriate normalization. Correlation with a model is linear in the input image, and can be computed effectively for all possible positions of the model using Fourier based linear filtering techniques. It is therefore interesting to extend the application to objects with many but small degrees of freedom in their geometry. These geometric variations deteriorate the linear correlation signal, both regarding its strength and localization with multiple peaks from a single object. Localization is typically preferred over detection, and Bayesian localization may be obtained as local integration of the probability density. In this work, Gaussian kernels of the exponentiated correlation are studied, and the use of Linear Scale-Space allows us to extend the Bayes detection with a well-posed localization, to extend the usage of correlation to a larger class of shapes, and to argue for the use of mathematical morphology with quadratic structuring elements on correlation images. This project is supported in part by the Danish Research Agency, project “Computing Natural Shape”, no. 2051-01-0008 and in part by the DSSCV project under the IST Programme of the European Union (IST-2001-35443)

U2 - 10.1007/3-540-44935-3_55

DO - 10.1007/3-540-44935-3_55

M3 - Article in proceedings

T3 - Lecture notes in computer science

SP - 785

EP - 797

BT - Scale Space Methods in Computer Vision

Y2 - 29 November 2010

ER -

ID: 5581838