Improved foreground detection via block-based classifier cascade with probabilistic decision integration


Autoria(s): Reddy, Vikas; Sanderson, Conrad; Lovell, Brian C.
Data(s)

09/01/2013

Resumo

Background subtraction is a fundamental low-level processing task in numerous computer vision applications. The vast majority of algorithms process images on a pixel-by-pixel basis, where an independent decision is made for each pixel. A general limitation of such processing is that rich contextual information is not taken into account. We propose a block-based method capable of dealing with noise, illumination variations, and dynamic backgrounds, while still obtaining smooth contours of foreground objects. Specifically, image sequences are analyzed on an overlapping block-by-block basis. A low-dimensional texture descriptor obtained from each block is passed through an adaptive classifier cascade, where each stage handles a distinct problem. A probabilistic foreground mask generation approach then exploits block overlaps to integrate interim block-level decisions into final pixel-level foreground segmentation. Unlike many pixel-based methods, ad-hoc postprocessing of foreground masks is not required. Experiments on the difficult Wallflower and I2R datasets show that the proposed approach obtains on average better results (both qualitatively and quantitatively) than several prominent methods. We furthermore propose the use of tracking performance as an unbiased approach for assessing the practical usefulness of foreground segmentation methods, and show that the proposed approach leads to considerable improvements in tracking accuracy on the CAVIAR dataset.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/57367/

Publicador

IEEE

Relação

http://eprints.qut.edu.au/57367/1/57367A.pdf

DOI:10.1109/TCSVT.2012.2203199

Reddy, Vikas, Sanderson, Conrad, & Lovell, Brian C. (2013) Improved foreground detection via block-based classifier cascade with probabilistic decision integration. IEEE Transactions on Circuits and Systems for Video Technology, 23(1), pp. 83-93.

Direitos

Copyright 2012 IEEE

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Fonte

Science & Engineering Faculty

Palavras-Chave #010200 APPLIED MATHEMATICS #010401 Applied Statistics #080106 Image Processing #080109 Pattern Recognition and Data Mining #090609 Signal Processing
Tipo

Journal Article