Local and Global Feature Extraction for Invariant Object Recognition
Data(s) |
18/12/2007
18/12/2007
05/12/2002
|
---|---|
Resumo |
Perceiving the world visually is a basic act for humans, but for computers it is still an unsolved problem. The variability present innatural environments is an obstacle for effective computer vision. The goal of invariant object recognition is to recognise objects in a digital image despite variations in, for example, pose, lighting or occlusion. In this study, invariant object recognition is considered from the viewpoint of feature extraction. Thedifferences between local and global features are studied with emphasis on Hough transform and Gabor filtering based feature extraction. The methods are examined with respect to four capabilities: generality, invariance, stability, and efficiency. Invariant features are presented using both Hough transform and Gabor filtering. A modified Hough transform technique is also presented where the distortion tolerance is increased by incorporating local information. In addition, methods for decreasing the computational costs of the Hough transform employing parallel processing and local information are introduced. |
Identificador |
TMP.objres.356.pdf http://www.doria.fi/handle/10024/31182 URN:ISBN:952-214-265-4 |
Idioma(s) |
en |
Relação |
Acta Universitatis Lappeenrantaensis ISSN 1456-4491 URN:ISSN:1456-4491 |
Palavras-Chave | #feature extraction #invariant object recognition #Hough transform #Gabor filtering #computer vision #image analysis |
Tipo |
Väitöskirja Doctoral dissertation |