2020
DOI: 10.1109/access.2020.3017074
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Predictive Tracking of Continuous Object Boundaries Using Sparse Local Estimates

Abstract: Environmental hazards (wildfires, floods, oil spills) are often modeled as ''continuous objects'' which evolve in space and time taking irregular shapes. Tracking their boundaries and accurately predicting their spatiotemporal spreading patterns is of paramount importance to combat their often catastrophic consequences. Wireless Sensor Networks (WSN) have been very instrumental for this purpose. However, current WSN-based methods require a prohibitively large density of deployed sensors to achieve a reasonable… Show more

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Cited by 2 publications
(1 citation statement)
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References 34 publications
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“…This minimizes the number of boundary nodes and reduces the data exchange between nodes. In [21], Manatakis et al proposed to use the local frontier properties provided by distributed sensors to estimate to track the boundary of an evolving continuous object. The method first filters and fuses the sparse set of available local front estimates, and then uses the resulting information to reconstruct smooth curve predictions of future time-evolving object boundaries.…”
Section: B Boundary Refinementmentioning
confidence: 99%
“…This minimizes the number of boundary nodes and reduces the data exchange between nodes. In [21], Manatakis et al proposed to use the local frontier properties provided by distributed sensors to estimate to track the boundary of an evolving continuous object. The method first filters and fuses the sparse set of available local front estimates, and then uses the resulting information to reconstruct smooth curve predictions of future time-evolving object boundaries.…”
Section: B Boundary Refinementmentioning
confidence: 99%