Date: Fri, 29 Mar 2024 08:31:41 +0000 (UTC)
Message-ID: <1585814840.535.1711701101796@ip-10-0-0-233.us-west-2.compute.internal>
Subject: Exported From Confluence
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RenderMan 21.5
RenderMan 21.5
Welcome to RenderM=
an 21.5!
This release introduces the following improvements, fixes, and miscellan=
eous changes.
New Features=
It is now possible to run the Denoise tool on EXRs exported after a compositing process if the=
channel names and data are preserved.
Added color remapping features to PxrHairColor as a new Artistic mode. We default to the previous P=
hysical mode for backward compatibility.
=
p>
Scene courtesy of Krystal Sae Eua for The Mill
Miscellaneous Changes
- Substantial improvements made to Denoiser performance on the CPU, speed=
improvements of 2x to 4x are possible.
- Default settings for PxrMarschnerHair have changed.
- Improved sampling results when using mesh lights.
- Improved default Shadow LPE with improved accuracy and now works with l=
ight filters. Previous behavior is preserved by using the 'shadows214;=
' LPE prefix, i.e. lpe:shadows214;CDL
- PxrSurface now has more accurate behavior when thin shadows are e=
nabled on glass-like surfaces; the improved behavior more accurately models=
the energy loss due to multiple reflection/refraction bounces. This ch=
ange may cause some darkening of shadows compared to earlier versions.=
- The GGX specular option for PxrSurface should see reduced noise as well=
as a slight change at grazing angles on anisotropic materials.
- Dramatic improvement in PxrMarschnerHair rendering speed, this might re=
sult in a slight brightness change when specularcompensation was active.
- Updated the light selection algorithm. We expect, especially in situati=
ons with very many lights, that the new algorithm will demonstrate faster i=
terations times and/or improved convergence per iteration.
- Max continuation length is now at least 256. Unless you have a signific=
ant number of overlapping volumes, you should not need to worry about this =
parameter.
- Displace shaders now receive Synchronize messages.
- Minor improvement to OSL texture access.
- Multiscatter now supports multiple samples, just like single scattering=
does. Also, equiangularWeight is only controlling single scatter now. Mult=
i-scatter ignores this.
- We've added velocityMultiplier to =
PxrVolume, it could be helpful when converting velocity per frame to pe=
r second, etc.
The max resident memory for PxrVCM=
has been reduced by around 30%.
The time to first pixel for scenes with volumes undergoing deformati=
on motion blur has been greatly reduced, especially when the motion blur is=
large and many threads are used.
- Fixed a bug where Denoise would not take advantage of all possible hard=
ware capability on Linux machines in either CPU or GPU mode.
Bug Fixes
- Fixed a bug in AccumOpacity with Volumes.
- Fixes in the fresnel computation on PxrMarschnerHair provide stricter e=
nergy conservation across lobes.
- Fixed an issue where energy compensation was not applied correctly to n=
on-Clearcoat lobes in PxrSurface.
Fixed a crash when using -recover 1 with very large display resoluti=
on and/or many displays.
Fixed bug causing incorrect matches in LPE results on aggregate volu=
mes.
Ray differentials computed for objects in or behind volumes are now =
correctly computed, eliminating discontinuities in texture filtering and im=
proving the performance of same.
- Support width attribute for points in AlembicProcPrim.
Fixed occasional indexing error in surface normals for SpSSDiffusion=
(ie. PxrSkin and PxrSubsurface bxdfs) when some albedos are black.
Display "int matte" has been fixed to once again work as expected. I=
ntegrator developers should call RixDisplayServices::FlagAsMatte() on sampl=
es coming from matte objects to indicate to the renderer when to ignore spl=
atted values. Plugin developers using RixDisplayServices will need to recom=
pile their plugins.
A bug that caused the shadow collector LPE to vary in intensity with=
a different number of fixedSamples to a light has been addressed.
Fixed a random number biasing bug in hair widening. This will ch=
ange noise patterns on widened hair due to better sampling.
Fixed memory allocation bug in deep EXR output drive that would caus=
e a crash when writing out deep data using crop windows.
Fixed inaccurate tangents and normals computed along a semi-sharp su=
bdivision surface crease edge which could occur at very coarse shading rate=
s.
- Fixed possible moire patterns with the PxrRectLight
Known Limitations
RenderMan Pro Server
- Full LPE support is only available with the PxrPathTracer and PxrVCM in=
tegrators.
- Light Filters in the PxrVCM integrator do not affect or shape photon em=
ission.
- The Cone Angle parameter for lights is incorrect, it does not match the=
input angle, this will be fixed in a future version.
- The PxrAovLight does not work properly with PxrUPBP.
- Analytical lights placed inside volumes may yield artifacts when made v=
isible to the camera. As a workaround, the light camera visibility should b=
e turned off, and a geometry with a similar shape should be used (visible t=
o the camera, invisible to transmission and indirect rays), with the proper=
emissive bxdf.
- Using the '.' character in the handle for an OSL shader could cause unp=
redictable results during re-rendering.
- Instances are not supported for baking.
- 3d baking: no direct bake-to-ptex support.
- PxrBakePointCloud cannot directly render ptex.
- No RixPTC/pointcloud API (so PxrBakePointCloud cannot read ptc files).<=
/li>
- Sample/Display filter plug-ins do not have access to lighting services =
for light dependent effects, e.g. lens flare.
- Adding new mesh light on existing geometry during IPR results in double=
geometry.
- Camera visibility changes are not respected during Live Rendering.
- For PxrUPBP, If the light source is inside a volume, that volume n=
eeds to be defined as Volume =E2=80=9Cbox=E2=80=9D
- For PxrUPBP, To get a volume caustic, the object casting the caust=
ic needs to have higher intersectpriority than the volume.
- For PxrUPBP, Overlapping heterogeneous volumes are not working yet=
. (However, overlapping homogeneous volumes do work.) This will be resolved=
in the future.
- PxrPortalLight may yield artifacts when generating photons for PxrVCM /=
PxrUPBP. This will be fixed in a future release.
- When attempting to access an array primvar, you must first check the si=
ze of the array primvar and allocate the appropriate space. Not doing so ma=
y lead to a crash.
- Points and curves cannot have mesh lights attached to them.
- Deformation motion blurred volumes don't currently work with densi=
tyFloatPrimVar or densityColorPrimVar. You will =
need to use a PxrPrimVar node connected to densityFloat and densi=
tyColor instead.
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