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Machine Vision and Applications

, Volume 9, Issue 2, pp 43–55 | Cite as

Depth extraction using a single moving camera: an integration of depth from motion and depth from stereo

  • Arun K. DalmiaEmail author
  • Mohan Trivedi
Article

Abstract

An integrated approach to extract depth, efficiently and accurately, from a sequence of images is presented in this paper. The method combines the ability of the stereo processing to acquire highly accurate depth measurements and the efficiency of spatial and temporal gradient analysis. As a result of this integration, depth measurements of high quality are obtained at a speed approximately ten times greater than that of stereo processing. Without any a priori information of the locations of the points in the scene, the correspondence problem in stereo processing is computationally expensive. In our approach, we use spatial and temporal gradient (STG) analysis, which has been shown to provide depth with great efficiency, but limited accuracy, to guide the matching process of stereo. The camera motion used in the approach can be either lateral or axial. Extensive experiments on real scenes have shown the ability of the integrated approach to acquire depth with a mean error of less than 3%.

Key words

Depth Structure Integration Motion Stereo 

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Copyright information

© Springer-Verlag 1996

Authors and Affiliations

  1. 1.Electrical and Computer Engineering Department, Computer Vision and Robotics Research LaboratoryThe University of TennesseeKnoxvilleUSA

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