Julkaisupalvelut

Bookmark and Share

In English

Tätä sivua ei enää ylläpidetä. Siirry uuteen julkaisuluetteloon tästä

Face and texture image analysis with quantized filter response statistics

Timo Ahonen

Teknillinen tiedekunta, Sähkö- ja tietotekniikan osasto, Oulun yliopisto

Infotech Oulu, Oulun yliopisto

Academic dissertation to be presented with the assent of the Faculty of Technology of the University of Oulu for public defence in Auditorium TS101, Linnanmaa, on 28 August 2009, at 12 noon

Oulun yliopisto

Esitarkastajat

Tohtori Sébastien Marcel

Professori Majid Mirmehdi

OULUN YLIOPISTO, OULU 2009

ISBN 978-951-42-9182-1 (PDF)

ISSN 1796-2226 (Online)

URN:ISBN:9789514291821

Abstract

Image appearance descriptors are needed for different computer vision applications dealing with, for example, detection, recognition and classification of objects, textures, humans, etc. Typically, such descriptors should be discriminative to allow for making the distinction between different classes, yet still robust to intra-class variations due to imaging conditions, natural changes in appearance, noise, and other factors.

The purpose of this thesis is the development and analysis of photometric descriptors for the appearance of real life images. The two application areas included in this thesis are face recognition and texture classification.

To facilitate the development and analysis of descriptors, a general framework for image description using statistics of quantized filter bank responses modeling their joint distribution is introduced. Several texture and other image appearance descriptors, including the local binary pattern operator, can be presented using this model. This framework, within which the thesis is presented, enables experimental evaluation of the significance of each of the components of this three-part chain forming a descriptor from an input image.

The main contribution of this thesis is a face representation method using distributions of local binary patterns computed in local rectangular regions. An important factor of this contribution is to view feature extraction from a face image as a texture description problem. This representation is further developed into a more precise model by estimating local distributions based on kernel density estimation. Furthermore, a face recognition method tolerant to image blur using local phase quantization is presented.

The thesis presents three new approaches and extensions to texture analysis using quantized filter bank responses. The first two aim at increasing the robustness of the quantization process. The soft local binary pattern operator accomplishes this by making a soft quantization to several labels, whereas Bayesian local binary patterns make use of a prior distribution of labelings, and aim for the one maximizing the a posteriori probability. Third, a novel method for computing rotation invariant statistics from histograms of local binary pattern labels using the discrete Fourier transform is introduced.

All the presented methods have been experimentally validated using publicly available image datasets and the results of experiments are presented in the thesis. The face description approach proposed in this thesis has been validated in several external studies, and it has been utilized and further developed by several research groups working on face analysis.

Asiasanat: computer vision, face recognition, feature extraction, robust descriptors, texture analysis

Julkaistu painettuna:

serieslogo

Acta Universitatis Ouluensis

Technica

C 330

ISBN 978-951-42-9181-4

ISSN 0355-3213

Oulun yliopiston muita julkaisuja


Julkaisupalvelut

Päivitetty 24.8.2011 | Webmaster