Supervised localimage feature detection


Autoria(s): Ilonen, Jarmo
Data(s)

18/12/2007

18/12/2007

07/12/2007

Resumo

This thesis is about detection of local image features. The research topic belongs to the wider area of object detection, which is a machine vision and pattern recognition problem where an object must be detected (located) in an image. State-of-the-art object detection methods often divide the problem into separate interest point detection and local image description steps, but in this thesis a different technique is used, leading to higher quality image features which enable more precise localization. Instead of using interest point detection the landmark positions are marked manually. Therefore, the quality of the image features is not limited by the interest point detection phase and the learning of image features is simplified. The approach combines both interest point detection and local description into one phase for detection. Computational efficiency of the descriptor is therefore important, leaving out many of the commonly used descriptors as unsuitably heavy. Multiresolution Gabor features has been the main descriptor in this thesis and improving their efficiency is a significant part. Actual image features are formed from descriptors by using a classifierwhich can then recognize similar looking patches in new images. The main classifier is based on Gaussian mixture models. Classifiers are used in one-class classifier configuration where there are only positive training samples without explicit background class. The local image feature detection method has been tested with two freely available face detection databases and a proprietary license plate database. The localization performance was very good in these experiments. Other applications applying the same under-lying techniques are also presented, including object categorization and fault detection.

Identificador

TMP.objres.766.pdf

http://www.doria.fi/handle/10024/31179

URN:ISBN:978-952-214-467-6

Idioma(s)

en

Relação

Acta Universitatis Lappeenrantaensis

URN:ISSN:1456-4491

Palavras-Chave #Gabor filters #multiresolution filtering #object detection #computer vision #machine vision #pattern recognition
Tipo

Väitöskirja

Doctoral Dissertation