2013
DOI: 10.1063/1.4821188
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A framework for estimating potential fluid flow from digital imagery

Abstract: Given image data of a fluid flow, the flow field, , governing the evolution of the system can be estimated using a variational approach to optical flow. Assuming that the flow field governing the advection is the symplectic gradient of a stream function or the gradient of a potential function-both falling under the category of a potential flow-it is natural to re-frame the optical flow problem to reconstruct the stream or potential function directly rather than the components of the flow individually. The… Show more

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Cited by 17 publications
(15 citation statements)
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“…Again, the literature is very rich (Maas et al, 1993;Guezennec et al, 1994) and references given here are therefore limited. Within particle tracking velocimetry also cross-breeding is found where optical flow is solved within a stream function (Heitz et al, 2010;Luttman et al, 2013). When the rate of displacement is more than several pixels, the main methods used are based on matching windows according to similarity.…”
Section: Particle Tracking Velocimetrymentioning
confidence: 99%
“…Again, the literature is very rich (Maas et al, 1993;Guezennec et al, 1994) and references given here are therefore limited. Within particle tracking velocimetry also cross-breeding is found where optical flow is solved within a stream function (Heitz et al, 2010;Luttman et al, 2013). When the rate of displacement is more than several pixels, the main methods used are based on matching windows according to similarity.…”
Section: Particle Tracking Velocimetrymentioning
confidence: 99%
“…Rather than correcting the illumination by modifying the scheme we choose a flowdriven refinement process (independent of image data) and perform a diffusion on the curl component. In order to achieve this, we consider the case φ(f ) = 1 and ψ = (∇ H • u) 2 where ∇ H is the Hamiltonian gradient also referred to as the symplectic gradient in literature [20]. Introducing the symplectic gradient switches the roles of divergence and curl in the Equation (10) and the analysis follows in the same lines.…”
Section: Resultsmentioning
confidence: 99%
“…symplectic gradient of a stream function) Luttman et.al. [20] computed the potential (resp. stream) function directly.…”
Section: Introductionmentioning
confidence: 99%
“…Warming associated with climate change causes the global sea level to rise (Mengel et al, 2016). There are three primary reasons for this, namely ocean expansion (McKay et al, 2011), ice sheets losing ice faster than it forms from snowfall and glaciers at higher altitudes melting. During the 20th century, the sea level rise has been dominated by glacier retreat.…”
Section: Introductionmentioning
confidence: 99%