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The phase features are divided into frames which are matched using the Hamming distance.
Points are matched using brute-force with simple distance thresholding and further refined by RANSAC.
In matching phase, oriented gradient and normal vector direction are also calcurated from input image, then model templates and input image are matched using these 2 features.
The underlying silhouettes/contours are matched using dynamic programming in a coarse-to-fine way that makes the search process efficient and also effective as shown through extensive evaluations.
T1D patients are matched using the propensity score to individuals in a control group of those without diabetes.
Then the normalised terms are matched using exact string matching method.
Similar(50)
Patients were matched using Injury Severity Scores, Glasgow Coma Scale, and age.
The families were matched using stratified propensity scoring on their pre-service risk status and followed for 16 months.
These experimental data should be matched using the relative permeability model in advance.
The slice position was matched using the aortic arch as a reference point.
Identifiers of the different data sources (fosmids, orthologs, RNAi hits) were matched using FlyMine [17].
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Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com