DocumentCode
2464342
Title
Object Localisation Using Generative Probability Model for Spatial Constellation and Local Image Features
Author
Kamarainen, J.-K. ; Hamouz, M. ; Kittler, J. ; Paalanen, P. ; Ilonen, J. ; Drobchenko, A.
Author_Institution
Univ. of Surrey, Guildford
fYear
2007
fDate
14-21 Oct. 2007
Firstpage
1
Lastpage
8
Abstract
In this paper we apply state-of-the-art approach to object detection and localisation by incorporating local descriptors and their spatial configuration into a generative probability model. In contrast to the recent semi- supervised methods we do not utilise interest point detectors, but apply a supervised approach where local image features (landmarks) are annotated in a training set and therefore their appearance and spatial variation can be learnt. Our method enables working in purely probabilistic search spaces providing a MAP estimate of object location, and in contrast to the recent methods, no background class needs to be formed. Using the training set we can estimate pdfs for both spatial constellation and local feature appearance. By applying an inference bias that the largest pdf mode has probability one, we are able to combine prior information (spatial configuration of the features) and observations (image feature appearance) into posterior distribution which can be generatively sampled, e.g. using MCMC techniques. The MCMC methods are sensitive to initialisation, but as a solution, we also propose a very efficient and accurate RANSAC-based method for finding good initial hypotheses of object poses. The complete method can robustly and accurately detect and localise objects under any homography.
Keywords
feature extraction; learning (artificial intelligence); maximum likelihood estimation; object detection; search problems; statistical distributions; MAP estimate; MCMC techniques; RANSAC-based method; generative probability model; inference bias; local image features; object detection; object localisation; posterior distribution; probabilistic search spaces; spatial constellation; supervised approach; training set; Detectors; Machine vision; Object detection; Pattern recognition; Phase detection; Robustness; Signal generators; Signal processing; Solid modeling; Speech processing;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision, 2007. ICCV 2007. IEEE 11th International Conference on
Conference_Location
Rio de Janeiro
ISSN
1550-5499
Print_ISBN
978-1-4244-1630-1
Electronic_ISBN
1550-5499
Type
conf
DOI
10.1109/ICCV.2007.4409186
Filename
4409186
Link To Document