1 February 2002 Methods cooperation for multiresolution motion estimation
Remy Leconge, Olivier Laligant, Frederic Truchetet, Alan Diou
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For a medical application, we are interested in an estimation of optical flow on a patient's face, particularly around the eyes. Among the methods of optical flow estimation, gradient estimation and block matching are the main methods. However, the gradient-based approach can only be applied for small displacements (one or two pixels). Generally, the process of block matching leads to good results only if the searching strategy is judiciously selected. Our approach is based on a Markov random field model, combined with an algorithm of block matching in a multiresolution scheme. The multiresolution approach allows detection of a large range of speeds. The large displacements are detected on coarse scales and small displacements are detected successively on finer scales in a coarse to fine strategy. The Markov random fields allow the initialization and control of motion estimation across all scales. The tracking of motion is achieved by a block matching algorithm. This method gives the optical flow, whatever the amplitude of motion is, if pertaining to the range defined by the multiresolution approach. The results clearly show the complement of Markov random field estimation and block matching across the scales.
©(2002) Society of Photo-Optical Instrumentation Engineers (SPIE)
Remy Leconge, Olivier Laligant, Frederic Truchetet, and Alan Diou "Methods cooperation for multiresolution motion estimation," Optical Engineering 41(2), (1 February 2002). https://doi.org/10.1117/1.1428740
Published: 1 February 2002
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KEYWORDS
Motion estimation

Magnetorheological finishing

Image processing

Optical engineering

Motion detection

Video

Detection and tracking algorithms

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