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Computer Vision
UpdatedMay 16, 2023
Get Image Info
Description
Retrieve image information (name, size, and type). Type : polymorphic.
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Input parameters
Image Src : class
Output parameters
Name : string, image name.
Image Info : cluster,Β
Width : integer, image width.
Height : integer, image height.
Image Type : integer, specifies the type of the image.
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- Grayscale (U8) :Β 8 bits per pixel (unsigned, standard monochrome)
- Grayscale (I16) : 16 bits per pixel (signed)
- Grayscale (SGL) : 32 bits per pixel (floating point)
- Complex (CSG) : 2Β ΓΒ 32 bits per pixel (floating point)
- RGB (U32) :Β 32 bits per pixel (red, green, blue, alpha)
- HSL (U32) :Β 32 bits per pixel (hue, saturation, luminance, alpha)
- RGB (U64) : 64 bits per pixel (red, green, blue, alpha)
- Grayscale (U16) : 16 bits per pixel (unsigned)
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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).
Table of Contents
