Date: Thu, 28 Mar 2024 16:36:34 +0000 (UTC)
Message-ID: <558137214.755.1711643794111@ip-172-31-36-10.us-east-2.compute.internal>
Subject: Exported From Confluence
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The Facing Ratio Utility shader.<=
/p>
=E2=86=92 Edge Colour
The =
colour seen at grazing angles (on the edge of the objects).
=E2=86=92 Center Colour
The colour seen at the center of the colour, where the normal is usually=
more facing the viewer.
=E2=86=92 Bias
This is a value in the [ 0..1 ] range used in a Bias Func=
tion to affect how the output is interpolated between the center and the ed=
ge. A bias function is similar to a Gamma function but with the range set b=
etween 0 and 1. A value of 0.5 interpolates linearly between center a=
nd edge.
=E2=86=92 Contrast
Applies a contrast to the output.
=E2=86=92 Normal
The normal to use then computing the facing ratio. If nothing is connect=
ed to this plug, the surface normal will be used.
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