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Computer Vision
Group ROIs
Description
Builds a single ROI descriptor from an of array ROI descriptors. Type : polymorphic.
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Input parameters
ROI Descriptors : array, array of ROI descriptors that are to be merged.
Global Rectangle : array, contains the coordinates of the bounding rectangle. Rectangles are specified by their bounding rectangle, with the format (Left/Top/Right/Bottom).
Contours : array, are each of the individual shapes that define an ROI.
ID : enum, refers to whether the contour is the external or internal edge of an ROI.
Type : integer, is the shape type of the contour.
Coordinates : array, indicates the relative position of the contour.
Output parameters
Β ROI Descriptor :Β cluster, ROI descriptor containing all the contours in the array of ROIs.
Β Global Rectangle :Β array, contains the coordinates of the bounding rectangle. Rectangles are specified by their bounding rectangle, with the format (Left/Top/Right/Bottom).
Β Contours :Β array, are each of the individual shapes that define an ROI.
Β ID :Β enum, refers to whether the contour is the external or internal edge of an ROI.
Β Type :Β integer, is the shape type of the contour.
Β Coordinates :Β array, indicates the relative position of the contour.
Β
Examples
All these examples are snippets PNG, you can drop these Snippet onto the block diagram and get the depicted code added to your VI (Do not forget to install Computer Vision βlibrary to run it).
