Statistical detection of independent movement from a moving camera

Least squares is perhaps the most commonly used method of parameter estimation in computer vision algorithms. However, the estimated parameters from a least squares fit can be corrupted beyond recognition in the presence of gross errors or outliers which plague any data from real imagery. Within thi...

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Detaylı Bibliyografya
Asıl Yazarlar: Torr, PHS, Murray, DW
Materyal Türü: Journal article
Dil:English
Baskı/Yayın Bilgisi: Elsevier 1993
Diğer Bilgiler
Özet:Least squares is perhaps the most commonly used method of parameter estimation in computer vision algorithms. However, the estimated parameters from a least squares fit can be corrupted beyond recognition in the presence of gross errors or outliers which plague any data from real imagery. Within this paper we present a general methodology to not only identify these outliers but also give indications about the reliability of a fit. The methods presented are then applied to the problem of motion segmentation, identifying the objects within an image moving independently of the background. The algorithm requires only the first order properties of the image intensities and does not require known camera motion. It has been tested on a variety of real imagery. A b-spline snake is initialized on the occluding contours of this region of interest.