Fast and robust stereo matching algorithms for mining automation


Autoria(s): Banks, Jasmine; Bennamoun, Mohammed; Corke, Peter; Kubik, Kurt
Contribuinte(s)

Howarth, D.

Gurgenci, H.

Rowlands, J.

Hatherly, P.

Firth, B.

Meyer, T.

Data(s)

15/09/1998

Resumo

The mining environment, being complex, irregular, and time-varying, presents a challenging prospect for stereo vision. For this application, speed, reliability, and the ability to produce a dense depth map are of foremost importance. This paper evaluates a number of matching techniques for possible use in a stereo vision sensor for mining automation applications. Area-based techniques have been investigated because they have the potential to yield dense maps, are amenable to fast hardware implementation, and are suited to textured scenes. In addition, two nonparametric transforms, namely, rank and census, have been investigated. Matching algorithms using these transforms were found to have a number of clear advantages, including reliability in the presence of radiometric distortion, low computational complexity, and amenability to hardware implementation.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/55364/

Publicador

The Cooperative Research Centre for Mining Technology and Equipment (CMTE)

Relação

http://eprints.qut.edu.au/55364/1/cmte.pdf

http://www.sciencedirect.com/science/article/pii/S1051200499903378

Banks, Jasmine, Bennamoun, Mohammed, Corke, Peter, & Kubik, Kurt (1998) Fast and robust stereo matching algorithms for mining automation. In Howarth, D., Gurgenci, H., Rowlands, J., Hatherly, P., Firth, B., & Meyer, T. (Eds.) 1998 Australian Mining Technology Conference, The Cooperative Research Centre for Mining Technology and Equipment (CMTE), Fremantle, WA, pp. 356-369.

Direitos

Copyright 1999 Elsevier

Fonte

School of Electrical Engineering & Computer Science; Science & Engineering Faculty

Palavras-Chave #080104 Computer Vision #080106 Image Processing #stereo vision #image matching #area-based matching
Tipo

Conference Paper